Abstract
Introduction:
Agriculture, forestry, and fishing industry (AgFF) workers often work extremely long hours during peak production seasons, resulting in sleep deprivation and fatigue. The National Occupational Research Agenda has classified fatigue as a “significant safety issue” and area of concern for many industry sectors, including AgFF. This review explores current research and practice in AgFF and proposes next steps.
Methods:
We conducted a scoping literature review to examine the extent and nature of research in this area. Article inclusion criteria included peer-reviewed journal articles written in English; published after 1989; covering AgFF workers in high-income countries; with data on working hours/schedules and sleep related to safety and health.
Results:
Limited research has addressed long hours and sleep deprivation among AgFF workers. We identified 8350 articles for title and abstract review. Among those, 407 underwent full-text review and 96 met all inclusion criteria (67% agriculture, 25% fishing/seafood processing, 8% forestry). The literature provided some evidence fatigue contributes to fatalities, injuries, and illnesses in AgFF. Older, new, young, foreign-born, and female workers, as well as those who work in small organizations or longer hours (40+) may be at higher risk for fatigue-related injury and illness. Few studies have developed or evaluated interventions to control risks.
Discussion:
Given that fatigue is a factor in injury and illness for this sector, future AgFF surveillance and research should increase efforts to capture fatigue and sleep data, directly investigate the role of long hours and nonstandard work schedules in the sector, and most importantly, create practical interventions to manage fatigue.
Keywords: agriculture, aquaculture, commercial fishing, extended shift, fatigue, forestry, irregular schedules, seafood processing, sleep, work hours
1 |. INTRODUCTION
The agriculture, forestry, and fishing (AgFF) industry sector has approximately 2.4 million workers.1 Agriculture includes both crop and animal production, as well as animal products such as milk and eggs. Forestry includes logging operations and businesses that grow trees and gather forest products. Fishing includes a variety of commercial fishing operations offshore and onshore. AgFF workers face serious safety and health challenges potentially compounded by long hours, limited sleep, and fatigue. AgFF has the highest fatal injury rate among all industry sectors, at 23.4 per 100,000 full-time equivalent workers (FTEs), over six times higher than the all-worker rate of 3.5 per 100,000 FTEs.2 Likewise, AgFF workers are at high risk for nonfatal injury and illness, with a rate of 5.3 per 100 FTEs, compared to the all-worker rate of 2.8 per 100 FTEs.3 Furthermore, the nonfatal injury and illness rate likely severely underestimates the true injury and illness burden in this sector, due to limitations in reporting and methodology of surveying employers (e.g., exclusion of self-employed workers, which constitute a significant portion of this workforce).4 At the same time, most AgFF workers are specifically exempted from policies regulating maximum hours per shift, overtime pay, minimum wage, child labor restrictions, as well as health and safety enforcement.5–7
Across the AgFF sector, long work hours and fatigue-related injury and illness have been identified as topics of concern. In 2008, the National Occupational Research Agenda (NORA) for AgFF stated fatigue was a “significant safety issue” and is a “cultural norm.”8 The current NORA for AgFF also described it as an area of concern and includes a priority to explore risk factors for fatigue and to develop interventions.9 US agriculture workers do work longer hours on average, but hours can vary by the type of commodity produced and by season. The National Agricultural Workers Survey reported that in 2015–2016, agricultural crop production workers on average worked 38–54 h/week10; whereas, the national average for all US workers was 34.5 h/week.11 In 2019, agriculture and related industry full-time workers on average worked 47.6 h/week compared to 42.5 h/week for nonagricultural workers, and 19.3% of agriculture workers reported 60 h or over per week compared to 6.4% of nonagricultural workers.12
Studies have shown overtime, extended work shifts, and lack of sufficient sleep are known risk factors for injury and illness.13 For example, workers who lack sufficient sleep are at higher risk of vehicle crashes, obesity, psychological disorders, musculoskeletal disorders, reproductive problems, diminished immune response, and chronic disease.14–17 Fatigue, as a result of long hours and sleep deprivation, leads to decreases in cognitive performance which may affect attention, executive function, reaction time, short-term memory, and other factors.18–28
The National Institute for Occupational Safety and Health (NIOSH) is dedicated to reducing the health and safety risks associated with shift work, long work hours, and other sources of fatigue. NIOSH has facilitated a variety of teams to identify research gaps/needs related to working hours, sleep, and fatigue in industries across the US. This manuscript is part of series of papers developed following the NIOSH Working Hours, Sleep and Fatigue Forum on September 13–14, 2019.29 The objective of this scoping review was to identify available occupational safety and health research related to extended working hours, sleep deprivation, and fatigue-related injury and illness in the AgFF industry through a scoping literature review. Moreover, this paper identifies key cross-industry issues and knowledge gaps and suggests future research directions to identify effective fatigue-mitigation interventions tailored to the AgFF industry.
2 |. METHODS
As our goal for this review was to gather, describe, and categorize available research on work hours, sleep, and fatigue specifically within the AgFF sector, we conducted a scoping review informed by methodology described in Arksey and O’Malley, Peters et al., and Munn et al.30–32 Scoping reviews, while often still rigorous and replicable, focus on a broader topic rather than an individual research question (or questions).32 Likewise, scoping reviews seek to characterize the available types of research data, describe/contextualize key concepts and factors, and propose future research areas related to the topic; however, they do not generally go on to assess strengths or weaknesses in the methodology of individual articles as in a systematic review.31,32 Our scoping review process included the following steps: (1) developing case definition and inclusion/exclusion criteria; (2) conducting an initial pilot search to identify keywords and representative papers; (3) identifying relevant studies through a title and abstract search; (4) selecting studies for a full-text review; (5) recording relevant attributes of the papers; (6) collating, summarizing, and reporting results. The research team was comprised of individuals familiar with the various aspects of the agriculture, forestry, and fishing sector, epidemiology, and literature synthesis. The team worked with Centers for Disease Control and Prevention librarians to finalize search terms and selection of databases to search.
2.1 |. Case definition
We first defined fatigue as a decrease in mental or physical ability as a result of irregular schedules, extended work hours (8 or more hours worked in a shift), and/or sleep deprivation (sleeping less than recommended33 sleep duration). Self-reported feelings of “fatigue,” “tiredness,” “sleepiness,” and other related terms were included, as were studies in which participants’ fatigue/sleepiness was quantifiably measured (e.g., Epworth Sleepiness Scale). Studies that did not specify the source of fatigue (physical labor, sleep deprivation, work schedule) were included in the review. Articles with discussions of fatigue in relation to factors which did not result in longer hours or irregular schedules (vibration, noise, pesticide, or chemical exposure, etc.) were excluded. While these factors are important areas of study, our focus was specifically to look at the effects of work hours (extended, irregular, early/late start) on fatigue and adverse outcomes. The search terms included: Sleep* OR (“work” within five words of “shift*”) OR fatigue* OR exhaustion OR tired OR work schedule OR (work* ADJ5 hour*) OR wakefulness OR rotating shift* OR (long* ADJ5 hour*). The AgFF industry included any industry subsector listed under North American Industry Classification System (NAICS) code 11, as well as seafood processing (NAICS 3117) due to it occurring on fishing vessels. Our search terms included Fishery OR Fisheries OR Fish processing OR fish processor* OR seafood processing OR seafood processor* OR agriculture OR agricultural OR poultry production OR egg production OR commercial fishing OR fishermen OR (fishers NOT (fishers ADJ2 test*) OR forestry OR logging OR aquaculture OR mariculture OR crop production OR farming OR farmer* OR farm-hand* OR farmhand* OR farm work* OR ranch*).
Concurrently, seven databases were searched for publications during the years 1990–2019: Medline, Embase, PsychInfo, CAB Abstracts (OVID), Scopus, Agricultural and Environmental Science Collection (ProQuest), and Web of Science. All records were then placed into EndNote X9 bibliographic management software34 and uploaded into Covidence,35 an online systematic review management software. Duplicates were automatically removed.
2.2 |. Inclusion/exclusion criteria
Peer-reviewed papers, regardless of study design, were included. We did not include gray literature such as presentations, unpublished reports, trade journal articles, or government documents. Articles were written in English; published 1990–2019; covering AgFF workers (NAICS 11) or Seafood Processors (NAICS 3117), from high-income countries as defined by the World Bank36 which generally more closely resemble US industry practices; and included data on working hours, schedules, sleep, and reported feelings of fatigue-related terms, for example, “fatigue,” “tiredness,” “sleepiness,” or other related terms as they relate to worker safety and health.
2.3 |. Analysis
Articles were reviewed by three study team members. After two recorded the same decision, the article was put through to the next step or removed. If, however, the decision was not the same, the third reviewer resolved the conflict. If the third reviewer could not resolve the conflict, it was decided by consensus among the three reviewers. Full-text review of articles was completed in the same fashion. Relevant data were then extracted and subsequently categorized by industry subsector, year, country, study design, key findings, common themes, possible interventions, identified research gaps, and recommendations for future research.
3 |. RESULTS
The initial search returned 9217 articles to which we added 66 articles from the pilot review, plus one article from a search of the reference sections in our pilot review. This yielded a total of 9284 articles. Using the Covidence application, 934 duplicates were automatically removed, leaving 8350 articles for title and abstract review. Among those, 407 were determined to be relevant and underwent full-text review. After the full-text review, only 96 met all inclusion criteria. The other 311 were rejected in accordance with the exclusion criteria: 208 not pertaining to relevant exposure and outcomes, 70 incorrect worker population, 17 not a peer-reviewed article, 9 duplicate, 3 unable to obtain copy of full text, 2 not in English, and 2 before 1990 (Figure 1).
By industry, 64 articles referenced agriculture and none in aquaculture (67%), 22 referenced fishing and 2 seafood processing (25%), and 8 in forestry (8%). By study design, there were 58 cross-sectional, 10 cohort, 10 qualitative, 6 literature reviews, 3 case control, 3 mixed methods, 3 interventional, 2 editorials, and 1 theoretical (model). By country, 45 papers featured workers in the United States, 45 were outside of the United States, and 6 were multi-country or global in scope. Overall, the review confirms there has been little research specifically on work hours, sleep, and fatigue in the AgFF sector compared to other sectors. Most articles did not focus on sleep deprivation, work hours, or work schedules among AgFF workers, but instead discussed fatigue in the context of a broader investigation of occupational injury and illness. Twenty-two studies included quantitative data on work hours and sleep in relation to injury and are included in Table 1; however, these studies relied on self-report surveys and interviews and mainly focused on farm owners and farm households. There were no studies in industries other than crop and livestock production agriculture. While a few studies focused on younger farm workers37–39 and older owners/workers,40,41 only two of the studies focused on migrant/immigrant populations.39,42
TABLE 1.
Study | Year | Sample | Country (region) | Population description | Method of report | Stated study focus | Findings related to work hours, sleepa |
---|---|---|---|---|---|---|---|
Work hours | |||||||
Browning | 2013 | 1149 | USA (Kentucky) | Beef cattle operators and workers | Self-report (survey) | Cattle-related injuries and farm management practices | OR = 2.01 injury for principal operator when 40+ h/week, 95% CI (1.3–3.24) OR = 1.72 injury for all workers when 36–60 h/week, 95% Cl (1.05–2.81) OR = 2.52 injury for all workers when 60+ h/week, 95% CI (1.55–4.09) |
DeWit | 2015 | 1135 | Canada (Saskatchewan) | Farm youth and young adults, 12–29b | Self-report (survey) | Farm activities and agricultural injuries | Risk ratio = 10.3 injury for hours of farm work, 30+ h/week, 95% CI (2.2–47.5), (p = 0.003) |
Erkal | 2008 | 32,602 | USA (Minnesota, Wisconsin, North Dakota, South Dakota, and Nebraska) | Farm householdsc | Self-report (interview) | Animal-related injuries | Animal-related injury event rates per 1000 persons per year: >40–60 h/week = 55.9, 95% CI (47.0–66.6) >60–80 h/week = 78.5, 95% CI (66.9–92.1) >80 h/week = 100.9, 95% CI (78.4–130.0) |
Gerberich | 1998 | 13,144 | USA (Minnesota, Wisconsin, North Dakota, South Dakota, and Nebraska) | Farm householdsd | Self-report (interview) | Machine-related injuries | Machine-related injury rate per 100,000 persons: 40–59 h/week = 2254, rate ratio: 12.52, 95% CI (6.20–25.29) 60–79 h/week = 3664, rate ratio: 20.66, 95% CI (10.50–40.62) 80+h/week = 2716, rate ratio: 15.16, 95% CI (6.91–33.26) |
Heaton | 2010 | 756 | USA (Kentucky and South Carolina) | Farmers aged 50 and oldere,f | Self-report (survey) | Sleep apnea indicators and injury | OR = 1.017 injury per 1-h increase in work hours, 95% CI not given (p = 0.0047) (found to be not statistically significant in final multivariable logistic regression model) |
Hwang | 2001 | 1706 | USA (New York) | Farm owners/workersg | Self-report (interview) | Severe farm injuries | OR = 9.54 injury for those working >8 h/day (54.0% of participants), 95% CI (4.48–21.2), (p = <0.0001) |
Ichihara | 2019 | 337 | Japan | Farm workers | Self-report (survey) | Risk factors for occupational accidents | OR = 1.76 occupational accidents for those working ≥8 h/day, 95% CI (1.15–2.68) |
Lilley | 2012 | 4439 | Canada (Saskatchewan) | Farm owners/workers aged 16 and olderb | Self-report (survey) | Relationship between fatigue-related factors and work-related injuries | Percentage of workers injured in peak season by work hours: 30–59 h/week = 6.7%, 60–79 = 9.1%, ≥80 = 10.1% (p = <0.0001) Percentage of workers injured in nonpeak season by work hours: 30–59 h/week = 2.6%, 60–79 = 4.6%, ≥80 = 2.6% (p = <0.001) |
McCurdy | 2004 | 135 | USA (California) | Farm operators | Self-report (survey) | Nonfatal occupational injury | OR = 2.63 injury farmed 1441–3500 h in the last year, 95% CI (1.43–4.83) OR = 3.77 injury farmed >3500 h in the last year, 95% CI (1.63–8.69) |
McCurdy | 2012 | 489 | USA (California) | Youth (grades 9–12) enrolled in agriculture sciences curriculum | Self-report (survey) | Risk factors for injury | OR = 5.09 injury for those who worked 1501+ h/year, 95% CI (1.61–16.1) |
Paulson | 2006 | 16,538 | USA (Minnesota, Wisconsin, North Dakota, South Dakota, and Nebraska) | Farm householdsc | Self-report (interview) | Fall-related injuries | Fall-related injury event rate per 1000 persons per year: >40–60 h/week = 49.2, 95% CI (38.6–62.6) >60–80 h/week = 52.1, 95% CI (40.6–66.8) >80 h/week = 55.6, 95% CI (37.9–81.6) |
Pratt | 1992 | 600 | USA (New York) | Dairy farm owners/workers | Self-report (interview) | Risk factors for occupational accidents | Relative risk = 2.76 injury for owners who worked more than 60 h/week and had 30+ acres under tillage/worker. Injured workers were: older (p = 0.01), worked more hours (p = 0.001), and had heavier workloads than noninjured workers (p = 0.001) |
Reiner | 2016 | 32,598 | USA (Minnesota, Wisconsin, North Dakota, South Dakota, and Nebraska) | Farm householdsc | Self-report (interview) | Large machinery-related injuries | Large machine-related injury events per year per 1000 persons: 20–39 h/week = 18.88, 95% CI (14.93–23.88) 40–59 h/week = 40.25, 95% CI (32.83–49.35) 60–79 h/week = 43.15, 95% CI (35.17–52.92) 80+ h/week = 43.19, 95% CI (30.56–61.05) |
Spengler | 2004 | 1004 | USA (Kentucky) | Part-time farmers age 19 and oldere | Self-report (interview) | Sleep deprivation and injuries | OR = 1.43 injury for 41–50 h/week, 95% CI (0.73–2.80) OR = 1.02 injury for >50 h/week, 95% CI (0.44–2.39) |
Spince | 2003 | 431 | USA (Iowa) | Farmers | Self-report (interview) | Risk factors for injury | OR = 1.65 injury for farmers working >50 h/week in the last year, 95% CI (1.23–2.21) |
Svendsen | 2014 | 2699 | Norway (2 counties) | Farmers | Self-report (survey) | Risk factors for injury | OR = 1.54 injury for working >3500 h at farm, 95% CI not given (p = <0.01) |
Insufficient sleep (less than 8h of sleep per night) | |||||||
DeWit | 2015 | 1135 | Canada (Saskatchewan) | Farm youth and young adults, 12–29b | Self-report (survey) | Farm activities and agricultural injuries | 9.5% injury rate for ≤6 h sleep per night, CI (6.3–12.6), (p = 0.0002) |
Lilley | 2012 | 4439 | Canada (Saskatchewan) | Farm owners/workers aged 16 and olderb | Self-report (survey) | Relationship between fatigue-related factors and work-related injuries | OR = 1.43 injury for 7–6 h per night sleep during peak season, 95% CI (0.96–2.12) OR = 1.48 injury for ≤5 h per night sleep during peak season, 95% CI (0.93–2.34) OR = 1.41 injury for 7–6 h per night sleep during nonpeak season, 95% CI (0.86–2.32) OR = 2.40 injury for ≤5 h per night sleep during nonpeak season, 95% CI (1.02–5.68), (p = 0.04) |
Spengler | 2004 | 1004 | USA (Kentucky) | Part-time farmers age 19 and oldere | Self-report (interview) | Sleep deprivation and injuries | OR = 1.01 injury for 7 h/day average sleep past year, 95% CI (0.64–1.59) OR = 1.25 injury for 6 h/day average sleep past year, 95% CI (0.73–2.15) OR = 1.12 injury for ≤5 h/day average sleep past year, 95% CI (0.47–2.64) |
Shipp | 2009 | 390 | USA (Texas) | Migrant farm worker families | Self-report (interview and survey) | Chronic back pain and associated work and nonwork variables | OR = 2.26 chronic back pain for <8 h/day sleep at home, 95% CI (1.16–8.12), (p = 0.024) OR = 3.25 chronic back pain for fairly bad/very bad quality of sleep while migrating, 95% CI (1.78–10.25), (p = 0.001) |
Shipp | 2013 | 410 | USA (Texas) | Farmworkers aged 13–19 years | Self-report (survey) | Acute occupational injury | HR = 2.10 injury for <8 per night, 95% CI (1.09–4.04), (p = 0.026) |
Epworth Sleepiness Scale (ESS) | |||||||
Day | 2009 | 252 | Australia (Victoria) | Farm owners/workers aged 16 and older | Self-report (interview) | Risk factors for work related injury among male farmers | OR = 0.51 injury for ESS > 10, 95% CI (0.32–0.82) |
King | 2014 | 2392 | Canada (Saskatchewan) | Farm owners/workers aged 16 and olderb | Self-report (survey) | Impact of excessive daytime sleepiness on safety and health | OR = 1.34 injury for ESS > 10, 95% CI (0.92–1.96) |
Spince | 2003 | 431 | USA (Iowa) | Farmers | Self-report (interview) | Risk factors for agricultural injury | OR = 1.27 injury for ESS > 15, 95% CI (0.98–1.66) |
Sleep disorder (diagnosed and symptoms) | |||||||
Dosman | 2013 | 5502 | Canada (Saskatchewan) | Farm owners/workersb | Self-report (survey) | Loud snoring and occupational injury | HR = 0.79 injury for diagnosed sleep apnea, 95% CI (0.43–1.47) HR = 1.45 injury for loud snoring, 95% CI (1.07–1.99) |
Heaton | 2010 | 756 | USA (Kentucky and South Carolina) | Farmers aged 50 and oldere,f | Self-report (survey) | Sleep apnea indicators and injury | OR = 1.861 injury for stop breathing while sleeping, 95% CI (1.035–3.346), (p = 0.038) OR = 2.246 injury for problems staying awake last month, 95% CI (1.244–4.055), (p = 0.007) |
Lilley | 2012 | 4439 | Canada (Saskatchewan) | Farm owners/workers aged 16 and olderb | Self-report (survey) | Relationship between fatigue-related factors and work-related injuries | OR = 1.20 injury for loud snoring, 95% CI (0.79–1.83) |
King | 2014 | 2392 | Canada (Saskatchewan) | Farm owners/workers aged 16 and olderb | Self-report (survey) | Impact of excessive daytime sleepiness on safety and health | OR = 0.96 injury for diagnosed sleep apnea, 95% CI (0.47–1.96) |
Marcum | 2011 | 1394 | USA (Kentucky and South Carolina) | Farmers aged 50 and oldere,f | Self-report (survey) | Injury among farmers 50 years and older | OR = 1.32 injury for 1–2 days restless nights in past week, 95% CI (0.96–1.81), (p = 0.0883) OR = 2.02 injury for 3–4 days restless nights in past week, 95% CI (1.32–3.09), (p = 0.0011) OR = 1.89 injury for 5–7 days restless nights in past week, 95% CI (1.28–2.80), (p = 0.0012) |
Spengler | 2004 | 1004 | USA (Kentucky) | Part-time farmers age 19 and oldere | Self-report (interview) | Sleep deprivation and injuries | OR = 2.28 injury for sleep medication used in the past month, 95% CI (1.67–4.47) OR = 2.17 injury for three sleep apnea signs and symptoms, 95% CI (1.03–4.56) |
Adjusted values used when available.
Saskatchewan Farm Injury Cohort.
Regional Rural Injury Study II (RRIS-II) Cohort.
Regional Rural Injury Study I (RRIS-I) Cohort.
Kentucky Farm Family Health and Hazard Surveillance Project.
African-American farmers from the Kentucky and South Carolina Agricultural Statistics Services.
New York State Farm Family Health and Hazard Surveillance Project.
3.1 |. Evidence of injury and illness
The review did provide some quantitative evidence of long work hours, insufficient sleep, and sleep disorders contributing to increased injury and illness in the AgFF sector specifically, but not in all studies43 (see Table 1). For work hours, studies generally indicated that with an increase in hours, injuries increased44–49; however, some studies showed a decreased rate at higher hours.50,51 Four studies captured reports of insufficient sleep (less than 8 h of sleep per night), and all found increased risk of injury37,39,51,52 or back pain.42 Of the three studies which measured sleepiness using the Epworth Sleepiness Scale, two studies did not find a statistically significant risk of injury,53,54 and one study found a score of >10 to be protective.43 For sleep disorder, studies found increased risk of injury for those who reported symptoms of sleep apnea40,41,51,52,55 or used sleep medication51, but one study found decreased risk for those who reported diagnosed sleep apnea.55
In agriculture, long hours and fatigue were thought to be risk factors for injury and illness.37,44,45,47–50,53,56–62 Sleep disorders63 and increased work hours,64,65 were associated with depression. A survey of farmers in the United Kingdom found they believed fatigue was the main factor in quad-bike (four-wheeler) loss-of-control incidents,56 and a survey of farmers in the United States found “hurry, fatigue, and stress” to be the top reasons for a work-related injury.66 Other effects of sleep loss/poor sleep in the agriculture industry included decreased balance,67 weakened hand grip,68 and a weak relationship between self-reported ill health and daytime sleepiness.69 Among loggers, self-reported near-miss injury reports were more common among those also reporting a “high level” of fatigue.70 In a series of interviews with loggers in Idaho, respondents reported “production pressure, fatigue, and inexperience as the most common factors contributing to logging injuries” with “working long hours, long commutes, and few days off” as the most frequently stated reasons for participants feeling fatigue.71 Reviews of fishing industry literature identified only a few articles and proposed fatigue as a major factor in fishing vessel disasters,72,73 but much more research is needed to thoroughly understand the impact of fatigue on vessel disasters and what can be done to mitigate it.74 Fishing industry75,76 studies also reported a high prevalence of obesity which may be related to fatigue.
3.2 |. Cross-cutting issues
We identified several issues across AgFF industries which may contribute to fatigue: extended work hours and irregular schedules, economic and organizational factors, housing and psychosocial factors, and co-occurring health disparities (older workers, new workers, young workers, foreign-born workers, female workers, and workers in small operations). Across all sectors, few studies developed or evaluated interventions to control risks, but recommendations for possible interventions and future research were identified.
3.3 |. Work hours/schedule
The review confirmed workers in the AgFF sector often work long hours (sometimes up to 16+ h per day) and experience fatigue, especially during peak harvest and production seasons.48,75,77–85 Operations frequently run 24-h per day, and shift work is prevalent, especially in forestry86 and seafood processing.77,78 The seasonal nature of AgFF work can contribute to fatigue in various ways. Light and darkness can negatively affect workers because they primarily work outside.86 Exposure to heat87 and cold stress may also increase fatigue due to physiological energy expenditures, or start shifts earlier or later to avoid extreme conditions. Harvests are frequently dependent on weather, which often results in working longer hours when the weather is good or when there is impending bad weather. Bell and Helmkamp found logging worker compensation claims in West Virginia (1995–2001) steadily increased from January to September and then decreased for the rest of the year, which the authors attribute to working longer hours in late summer to ensure sawmills would be supplied through winter.89 However, Lilley et al. found while decreased sleep during peak production times did not increase risk for injury, those who slept less than 5 h during nonpeak production times were at increased risk of injury (OR: 2.42, 95% CI: 1.04–5.59).52 Authors found working irregular schedules may contribute to injuries89 and mental health disorders65 among fishermen.
3.4 |. Organizational and economic factors
Economic and time pressures related to seasonal peaks (e.g., planting, harvesting) may result in shortcuts and working despite high levels of fatigue. Some articles noted that workers in the AgFF sector are often paid by how quickly they work (piece-rate) and/or the size of the harvest, leading to fast-paced work, long hours, and less sleep.90 Lizer and Petrea found while increased hours among older farmers did not increase injury risk, financial stress did.91 Increased hours working with animals also was a risk factor,45,46 but studies did not specifically compare extended schedules (40+ h/week) to handling livestock. Fishermen often work irregular and extremely long shifts during harvests.89 When stocks are depleted, fishermen must travel further and log longer hours for harvests.92,93 Farmers facing economic difficulty may understaff, diversify their business,94 and work at night,95 leading to increased hours, burnout, and depression. Farm workers may start at earlier times to avoid the hottest part of the day, but this may lead interfere with natural circadian rhythms leading to less sleep.96
3.5 |. Housing, family, and psychosocial factors
AgFF workers often live where they work, or commute long distances to and from remote worksites.71 Living and working in the same place means it is often hard to truly be “off the clock” and disengage from work, especially for crewmembers at sea who cannot “walk-off” the vessel to escape worksite stressors.77,93 At the same time, many workers in the sector work weeks, even months away from family, which several studies reported as a stressor.85,92,93,97 On family farms, owner/operators,51 their spouses, or their older children may work an additional job off the farm, which was shown to increase risk of injury.98,99 Children who work on farms may be more sleep-deprived than their nonfarm peers.100 Women who live on farms may work especially long hours as they may work an additional job off the farm, and help out on the farm, in addition to household/child-rearing duties.101 Farm owner-operators’ and their spouses who worked longer hours were more likely to say their children were involved in activities/tasks which are known causes of farm injury.80 Fishermen and offshore seafood processors sleep aboard vessels and may be bothered by vibration, noises, and constant moving of the working platform.76 Likewise, agricultural workers and onshore seafood processors often live onsite, and congregate housing conditions can contribute to poor sleep and fatigue, especially with poor or cramped housing conditions.75–77,90,102,103 However, one study found fishermen working 6-h shifts for up to 3 months did not show signs of increased physiological stress via cortisol, blood pressure, and blood lipids, but attributed the findings to “regular working hours, regular healthy meals, predictable tasks, and social well-being on board, as well as healthy worker affect.”104
3.6 |. Co-occurring health disparities
Among AgFF workers, there are disparities related to work hours, sleep, and fatigue among older workers,75,105–108 younger workers,37,39,98,100 new workers,71,86 and foreign-born workers96,102,108,109 putting these populations at higher risk for fatigue related injury and illness. Lizer and Petrea found older farmers worked longer hours than expected compared to those age 55+ in other occupations, especially during the spring and fall seasons, averaging 10–12h days,105 but longer work hours were not associated with increased injury in the same sample.91 However, in other studies, decreased sleep duration111 and “restless” sleep41 in older farmers was associated with increased risk of injury. For adolescent agricultural workers, lack of sleep39 and holding multiple jobs98 had increased rates of injury. Psychosocial problems such as stress, anxiety, depression,63,65,112 and family separation84,96 for extended periods also play a part in sleep deprivation and fatigue, with these potentially being more prevalent among foreign-born workers.97,109 One study of migrant workers found 45% experienced elevated depressive symptoms and 20% excessive sleepiness.109 Migrant farm workers with extended shifts had significantly more hand problems,64 and those who slept less than 8 h were at increased risk of chronic back pain.42 Female workers reported more daytime sleepiness than men in one study.109
3.7 |. Interventions
For the logging industry, multiple studies showed a reduction in productivity for both extended shifts and second/third shifts,86,113 which resulted in some companies eliminating extended shifts as an economic measure, but not for safety reasons.86 However, during night shifts, logging companies increased lighting and purchased two-way radios in an effort to increase visibility and communication after dark.86 Another logging industry study evaluating caffeine intake and comparing shift work found caffeine consumption can reduce risks but had “little benefit for a night of no sleep after a buildup of severe sleep debt”.114 Another study found access to air-conditioning was a key factor in better sleep quality when looking at housing quality of Latino farmworkers.103 A study of attitudes and beliefs among Vietnamese shrimp fishermen in the Gulf of Mexico demonstrated fatigue was a perceived risk factor and risk perceptions could be altered by knowledge and awareness of interventions influencing intent to change behavior.115
The two studies in this review that evaluated the effectiveness of fatigue interventions showed mixed results. Bowen et al. hoped to use real-time monitoring technology to measure fatigue in the logging industry, but found, “it may not be possible to identify correlations between workloads and fatigue measures using in-situ measurements as results are highly personalized to individual workers and can be misleading if the wider context is not also taken into consideration.”116 On the other hand, Levin et al. found “[s]imple, yet culturally appropriate training and awareness measures in the form of visual and written safety messages favorably influence attitudes, beliefs, and behavioral intent related to priority risk factors.”115 These safety messages included a fatigue awareness message as fatigue was a primary concern of one study subgroup.115
3.8 |. Research gaps and possible interventions
In all industries, the lack of both data and existing interventions for fatigue were mentioned, with a consensus that workers were aware of the hazards and realize the risks, but both the nature of the work and the organizational culture of AgFF industries are barriers to fatigue mitigation.117,118 Studies also mentioned a need for quality surveillance data to better understand the potential adverse outcomes of extended hours,57,89 irregular schedules, sleep disorder/deprivation119 on injury and illness specifically in AgFF. Screening for sleep disorders to improve sleep quality was mentioned.63,75 Further exploration of the relationship between sleep and injury and illness specifically for this sector was a suggested topic of future research.63,120–123 Suggestions for future research also focused on targeting interventions,49,124 the effect of mood disorders on fatigue and injury,125 exploring the relationship of policies and regulations,126 and testing a causal link between vessel disasters and fatigue.74
Studies stressed interventions must address the effects of long hours and fatigue, not necessarily create prescriptive rules in an effort to prevent it.90,117,127,128 Suggested interventions included focusing training on near misses,129 scheduling targeted fatigue and safety training,66 especially before or outside of busy times of the year,56 promoting awareness of problematic social norms which encourage longer hours and fatigue,94 adopting best practices from other industries,81 and using a community-based approach.118
4 |. DISCUSSION
Although long work hours, irregular schedules, and fatigue contribute to fatalities, injuries, and illnesses in the AgFF sector, little research has (1) quantified the extent to which they are contributing factors, especially on workers’ health over their life course, (2) developed interventions for hazard mitigation, or (3) evaluated existing interventions and programs. Most studies published on the AgFF sector focus on describing or measuring factors which may lead to fatigue, rather than developing and evaluating interventions. However, there is at least one research project on the effects of sleep deprivation in US fishermen currently underway (J. Sorensen, personal communication, August 13, 2020). Also, some government agencies have created educational materials for industry and workers addressing this,123,130 but there are no evaluations of their effectiveness. As fatigue is a major factor in injury and illness for this sector, future AgFF surveillance and research efforts should expand efforts to capture fatigue and sleep data, better understand fatigue in unique AgFF workspaces, and most importantly, create practical interventions to manage fatigue.
At the same time, there are significant challenges to collecting data on fatigue in the AgFF sector, such as logistical problems involving the rural and often remote nature of AgFF work, difficulty in how fatigue is conceptualized, measured, and recorded,131 as well as partnering with small businesses and part-time/seasonal employees. Due to regulatory and organizational barriers, reliable employment numbers, hours worked, and even injury and illness data in this sector are more difficult to obtain.132 One possible solution could be adding questions on sleep habits and work schedules to existing and future surveys of worker demographics and employment, such as the USDA’s National Agricultural Statistics Service (NASS) surveys and the DOL National Agricultural Workers’ Survey (NAWS). Incident, injury, and near-miss reports should clearly and specifically ask questions about hours worked, time of day, feelings of fatigue, hours of sleep, and related information to better document the role of fatigue as a risk factor for injury in this sector. Likewise, commute times to and from workplaces should be documented and factored into hours worked, even though they are often unpaid.
Future research must also address the unique nature of work in AgFF, workers’ economic and psychosocial stressors (e.g., substandard housing, extended family separation), as well as the pervasive attitude that working long hours or with fatigue is to be expected, even valued or rewarded. Regulatory and employer policies which incentivize working extended shifts should also be examined specifically in the unique regulatory context of the AgFF sector, but could draw on existing research54 and best practices133 from other occupations such as commercial truck drivers and nurses. Much of the manual labor and high-risk tasks in AgFF are performed by immigrant and foreign-born workers,134 who have known health disparities and risk factors135 which put them at higher risk of injury and illness due to fatigue; and therefore, this underserved population is in particular need of study. Likewise, the average age of the AgFF workforce is increasing, and research on the impact fatigue may have on older workers is needed—especially interventions which specifically and appropriately focus on this population.108
Community-based participatory research may also help to better understand and overcome the many systemic barriers such as regulatory, organizational, and work culture to addressing risks. Increased access to medical care and sleep disorder testing may also mitigate risk of fatigue.63 Anecdotal evidence from researchers and safety practitioners suggests AgFF workers use caffeine, energy drinks, and so on, or even prescription or illegal drugs to manage fatigue, but has not been studied. Many offshore fishing vessel profits are generally based on the value of the catch minus vessel expenses and then divided into “crew shares” and distributed. This often leads to smaller crews and longer work hours for the crew who remain.9 In both agriculture and seafood processing, some workers are paid by piece rate, and more research is needed on the effects of this administrative policy. Finally, there are no federal regulations mandating rest times, watchkeeping standards on vessels, or minimal levels of staffing for this sector, except for some of the largest of commercial fishing vessels.136 The effect of regulatory policy/agricultural exemptions, on work hours, sleep, and fatigue is another area of needed research. Finally, more research is needed to develop practical, relevant fatigue recognition indices and management strategies, and evaluate existing interventions.
Future interventions to address fatigue must move past generalized training on healthy sleep habits and the dangers of fatigue. Stakeholders have noted AgFF workers typically expect and are resigned to long work hours, sleep deprivation, and fatigue as an inevitable and ubiquitous hazard. To address this expectation, peer-to-peer and culturally competent education should be implemented to more effectively address AgFF’s unique culture and work environments. To develop and evaluate practical fatigue risk management strategies, however, researchers and practitioners cannot focus solely on educational/awareness efforts. They must also address the economic and structural influences on workplace organization, established culture and beliefs, and psychosocial factors that increase fatigue-related risks. Interventions which use the principles of harm reduction and social marketing to address long hours and fatigue may prove beneficial. Research assisting AgFF stakeholders in addressing this culture of resignation and reward, and providing practical solutions to manage fatigue, particularly during peak seasons, could lead to a change in work organization and processes, policies, and regulations, which ultimately may prevent fatalities, injuries, and illnesses among these high-risk workers.
ACKNOWLEDGMENTS
The authors would like to thank Laura Syron for her work on this review as well as insight as the review criteria were developed and screening process progressed. We also would like to thank the participants of the 2019 NIOSH Working Hours, Sleep, and Fatigue AgFF breakout session for their comments and experiences which helped to shape the scope of the review as well as the final recommendations. Finally, we’d like to thank Imelda Wong, Mary O’Connor, and Kyla Retzer for offering feedback on the manuscript.
APPENDIX
Search terms:
(Fishery OR Fisheries OR Fish processing OR fish processor* OR seafood processing OR seafood processor* OR agriculture OR agricultural OR poultry production OR egg production OR commercial fishing OR fishermen OR (fishers NOT (fishers ADJ2 test*)) OR forestry OR logging OR aquaculture OR mariculture OR crop production OR farming OR farmer* OR farm-hand* OR farmhand* OR farm work* OR ranch*)
AND
Sleep* OR (work ADJ5 shift*) OR fatigue* OR exhaustion OR tired OR work schedule OR (work* ADJ5 hour*) OR wakefulness OR rotating shift* OR (long* ADJ5 hour*)
NOT
exp animals/NOT exp humans/
Limit to English; 1990 -; Abstract Available
Footnotes
CONFLICT OF INTEREST
The authors declare no conflict of interest.
DISCLOSURE BY AJIM EDITOR OF RECORD
John Meyer declares that he has no conflict of interest in the review and publication decision regarding this article.
ETHICS APPROVAL AND INFORMED CONSENT
There was no ethics review and approval/or consent as this is a review of the literature.
DISCLAIMER
The findings and conclusions in this review are those of the author(s) and do not necessarily represent the views of the National Institute for Occupational Safety and Health.
DATA AVAILABILITY STATEMENT
The data that support the findings of this study are available from the corresponding author upon reasonable request.
REFERENCES
- 1.Bureau of Labor Statistics. Labor force statistics from the current population survey, household data, annual averages 18. Employed persons by detailed industry, sex, race, and Hispanic or Latino ethnicity. 2020. https://www.bls.gov/cps/cpsaat18.pdf
- 2.Bureau of Labor Statistics. Number and rate of fatal work injuries by industry sector, 2018. 2019. https://www.bls.gov/charts/census-of-fatal-occupational-injuries/number-and-rate-of-fatal-work-injuries-by-industry.htm
- 3.Bureau of Labor Statistics. Incidence rates of nonfatal occupational injuries and illnesses by selected industry and case types, private industry, 2017–18. 2019. www.bls.gov/web/osh/summ1_00.htm and www.bls.gov/web/osh/summ2_00.htm
- 4.Leigh JP, Du J, McCurdy SA. An estimate of the U.S. government’s undercount of nonfatal occupational injuries and illnesses in agriculture. Ann of Epidemiol. 2014;24(4):254–259. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 5.Liebman AK, Wiggins MF, Fraser C, Levin J, Sidebottom J, Arcury TA. Occupational health policy and immigrant workers in the agriculture, forestry, and fishing sector. Am J Ind Med. 2013;56(8):975–984. [DOI] [PubMed] [Google Scholar]
- 6.Quandt SA, Arnold TJ, Mora DC, Sandberg JC, Daniel SS, Arcury TA. Hired Latinx child farm labor in North Carolina: the demand-support-control model applied to a vulnerable worker population. Am J Ind Med. 2019;62(12):1079–1090. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 7.U.S. Department of Labor. Fact sheet #12: agricultural employers under the Fair Labor Standards Act (FLSA). 2020. https://www.dol.gov/agencies/whd/fact-sheets/12-flsa-agriculture
- 8.NORA Agriculture Forestry and Fishing Sector Council. National Agriculture, Forestry and Fishing Agenda. 2016. https://www.cdc.gov/nora/pdfs/NORA-AgFF-Revised-Agenda-Sept2016.pdf
- 9.NORA Agriculture Forestry and Fishing Sector Council. National Occupational Research Agenda for Agriculture, Forestry, and Fishing. 2018. [Google Scholar]
- 10.U.S. Department of Labor. Findings from the National Agricultural Workers Survey (NAWS) 2015–2016. 2018. https://wdr.doleta.gov/research/FullText_Documents/ETAOP_2019-01_NAWS_Research_Report_13.pdf
- 11.Bureau of Labor Statistics. Employment, hours, and earnings from the current employment statistics survey (national) and average weekly hours of all employees, quarterly averages, seasonally adjusted, total private, seasonally adjusted, 2015–2016. 2020. https://www.bls.gov/ces/data/
- 12.Bureau of Labor Statistics. Current population survey, household data, annual averages, table 19. Persons at work in agriculture and nonagricultural industries by hours of work. 2020. https://www.bls.gov/cps/aa2019/cpsaat19.htm
- 13.Caruso CC. Overtime and extended work shifts; recent findings on illnesses, injuries, and health behaviors. 2004. https://stacks.cdc.gov/view/cdc/11308
- 14.Rosekind MR, Gregory KB, Mallis MM, Brandt SL, Seal B, Lerner DJ. The cost of poor sleep: workplace productivity loss and associated costs. J Occup Environ Med. 2010;52(1):91–98. [DOI] [PubMed] [Google Scholar]
- 15.Rajaratnam SM, Barger LK, Lockley SW, et al. Sleep disorders, health, and safety in police officers. JAMA. 2011;306(23):2567–2578. [DOI] [PubMed] [Google Scholar]
- 16.Caruso CC. Negative impacts of shiftwork and long work hours. Rehabil Nurs. 2014;39(1):16–25. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 17.Perkins LA. Is the night shift worth the risk? RN. 2001;64(8):65. [Google Scholar]
- 18.Drummond SP, Brown GG. The effects of total sleep deprivation on cerebral responses to cognitive performance. J Neuropsychopharmacology. 2001;25(5):S68–S73. [DOI] [PubMed] [Google Scholar]
- 19.Balkin T, Thome D, Sing H, et al. Effects of Sleep Schedules on Commercial Motor Vehicle Driver Performance. Department of Transportation, Federal Motor Carrier Safety; 2000. [Google Scholar]
- 20.Balkin TJ, Bliese PD, Belenky G, et al. Comparative utility of instruments for monitoring sleepiness-related performance decrements in the operational environment. J Sleep. 2004;13(3):219–227. [DOI] [PubMed] [Google Scholar]
- 21.Belenky G, Wesensten NJ, Thorne DR, et al. Patterns of performance degradation and restoration during sleep restriction and subsequent recovery: a sleep dose-response study. J Sleep. 2003;12(1):1–12. [DOI] [PubMed] [Google Scholar]
- 22.Dall’Ora C, Ball J, Recio-Saucedo A, Griffiths P. Characteristics of shift work and their impact on employee performance and wellbeing: a literature review. Int J Nurs Stud. 2016;57:12–27. [DOI] [PubMed] [Google Scholar]
- 23.Dorrian J, Rogers NL, Dinges DF. Psychomotor Vigilance Performance: Neurocognitive Assay Sensitive to Sleep Loss. Marcel Dekker; 2005. [Google Scholar]
- 24.Niu S-F, Chung M-H, Chen C-H, Hegney D, O’Brien A, Chou K-R. The effect of shift rotation on employee cortisol profile, sleep quality, fatigue, and attention level: a systematic review. J Nurs Res. 2011;19(1):68–81. [DOI] [PubMed] [Google Scholar]
- 25.Philip P, Sagaspe P, Taillard J, et al. Fatigue, sleep restriction, and performance in automobile drivers: a controlled study in a natural environment. Sleep. 2003;26(3):277–280. [DOI] [PubMed] [Google Scholar]
- 26.Roehrs T, Burduvali E, Bonahoom A, Drake C, Roth T. Ethanol and sleep loss: a “dose” comparison of impairing effects. Sleep. 2003;26(8):981–985. [DOI] [PubMed] [Google Scholar]
- 27.Stenuit P, Kerkhofs M. Effects of sleep restriction on cognition in women. Biol Psychol. 2008;77(1):81–88. [DOI] [PubMed] [Google Scholar]
- 28.Dinges DF, Pack F, Williams K, et al. Cumulative sleepiness, mood disturbance, and psychomotor vigilance performance decrements during a week of sleep restricted to 4–5 hours per night. Sleep. 1997;20(4):267–277. [PubMed] [Google Scholar]
- 29.Wong IS, Swanson N. Approaches to managing work-related fatigue to meet the needs of American workers and employers. Am J Ind Med. 2022. 10.1002/ajim.23402 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 30.Arksey H, O’Malley L. Scoping studies: towards a methodological framework. Int J Soc Res Methodol. 2005;8(1):19–32. [Google Scholar]
- 31.Peters MD, Godfrey CM, Khalil H, McInerney P, Parker D, Soares CB. Guidance for conducting systematic scoping reviews. Int J Evid Based Healthc. 2015;13(3):141–146. [DOI] [PubMed] [Google Scholar]
- 32.Munn Z, Peters MD, Stern C, Tufanaru C, McArthur A, Aromataris E. Systematic review or scoping review? Guidance for authors when choosing between a systematic or scoping review approach. BMC Med Res Methodol. 2018;18(1):1–7. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 33.Hirshkowitz M, Whiton K, Albert SM, et al. National Sleep Foundation’s sleep time duration recommendations: methodology and results summary. Sleep Health. 2015;1(1):40–43. [DOI] [PubMed] [Google Scholar]
- 34.Endnote [computer program]. Version X9. Clarivate Analytics; 2019. [Google Scholar]
- 35.Covidence. Covidence. 2020. https://www.covidence.org/
- 36.The World Bank. World bank country and lending groups. 2019. https://datahelpdesk.worldbank.org/knowledgebase/articles/906519-world-bank-country-and-lending-groups
- 37.DeWit Y, Pickett W, Lawson J, Dosman J, Saskatchewan Farm Injury Cohort Team. Farm activities and agricultural injuries in youth and young adult workers. J Agromedicine. 2015;20(3):318–326. [DOI] [PubMed] [Google Scholar]
- 38.McCurdy SA, Kwan JA. Agricultural injury risk among rural California public high school students: prospective results. Am J Ind Med. 2012;55(7):631–642. [DOI] [PubMed] [Google Scholar]
- 39.Shipp EM, Cooper SP, del Junco DJ, Cooper CJ, Whitworth RE. Acute occupational injury among adolescent farmworkers from South Texas. Inj Prev. 2013;19(4):264–270. [DOI] [PubMed] [Google Scholar]
- 40.Heaton K, Azuero A, Reed D. Obstructive sleep apnea indicators and injury in older farmers. J Agromedicine. 2010;15(2):148–156. [DOI] [PubMed] [Google Scholar]
- 41.Marcum JL, Browning SR, Reed DB, Charnigo RJ. Farmwork-related injury among farmers 50 years of age and older in Kentucky and South Carolina: a cohort study, 2002–2005. J Agric Saf Health. 2011;17(3):259–273. [DOI] [PubMed] [Google Scholar]
- 42.Shipp EM, Cooper SP, del Junco DJ, et al. Chronic back pain and associated work and non-work variables among farmworkers from Starr County, Texas. J Agromedicine. 2009;14(1):22–32. [DOI] [PubMed] [Google Scholar]
- 43.Day L, Voaklander D, Sim M, et al. Risk factors for work related injury among male farmers. Occup Environ Med. 2009;66(5):312–318. [DOI] [PubMed] [Google Scholar]
- 44.Browning SR, Westneat SC, Sanderson WT, Reed DB. Cattle-related injuries and farm management practices on Kentucky beef cattle farms. J Agric Saf Health. 2013;19(1):37–49. [DOI] [PubMed] [Google Scholar]
- 45.Erkal S, Gerberich SG, Ryan AD, Renier CM, Alexander BH. Animal-related injuries: a population-based study of a five-state region in the upper Midwest: regional Rural Injury Study II. J Saf Res. 2008;39(4):351–363. [DOI] [PubMed] [Google Scholar]
- 46.McCurdy SA, Farrar JA, Beaumont JJ, et al. Nonfatal occupational injury among California farm operators. J Agric Saf Health. 2004;10(2):103–119. [DOI] [PubMed] [Google Scholar]
- 47.Paulson EH, Gerberich SG, Alexander BH, et al. Fall-related injuries among agricultural household members: regional Rural Injury Study II (RRIS-II). J Occup Environ Med. 2006;48(9):959–968. [DOI] [PubMed] [Google Scholar]
- 48.Pratt DS, Marvel LH, Darrow D, Stallones L, May JJ, Jenkins P. The dangers of dairy farming: the injury experience of 600 workers followed for two years. Am J Ind Med. 1992;21(5):637–650. [DOI] [PubMed] [Google Scholar]
- 49.Reiner AM, Gerberich SG, Ryan AD, Mandel J. Large machinery-related agricultural injuries across a five-state region in the Midwest. J Occup Environ Med. 2016;58(2):154–161. [DOI] [PubMed] [Google Scholar]
- 50.Gerberich SG, Gibson RW, French LR, et al. Machinery-related injuries: Regional Rural Injury Study--I (RRIS--I). Accid Anal Prev. 1998;30(6):793–804. [PubMed] [Google Scholar]
- 51.Spengler SE, Browning SR, Reed DB. Sleep deprivation and injuries in part-time Kentucky farmers: impact of self reported sleep habits and sleep problems on injury risk. AAOHN J. 2004;52(9):373–382. [PubMed] [Google Scholar]
- 52.Lilley R, Day L, Koehncke N, et al. The relationship between fatigue-related factors and work-related injuries in the Saskatchewan Farm Injury Cohort Study. Am J Ind Med. 2012;55(4):367–375. [DOI] [PubMed] [Google Scholar]
- 53.King N, Pickett W, Hagel L, Lawson J, Trask C, Dosman JA. Impact of excessive daytime sleepiness on the safety and health of farmers in Saskatchewan. Can Respir J. 2014;21(6):363–369. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 54.Belzer MH, Sedo SA. Why do long distance truck drivers work extremely long hours? Econ Labour Relat Rev. 2018;29(1):59–79. [Google Scholar]
- 55.Dosman JA, Hagel L, Skomro R, Sun X, Day A, Pickett W. Saskatchewan farm injury study team: loud snoring is a risk factor for occupational injury in farmers. Can Respir J. 2013;20(1):42–6. doi: 10.1155/2013/469391 [DOI] [PMC free article] [PubMed] [Google Scholar]
- 56.Clay L, Hay-Smith EJ, Treharne GJ, Milosavljevic S. Unrealistic optimism, fatalism, and risk-taking in New Zealand farmers’ descriptions of quad-bike incidents: a directed qualitative content analysis. J Agromedicine. 2015;20(1):11–20. [DOI] [PubMed] [Google Scholar]
- 57.Caffaro F, Micheletti Cremasco M, Roccato M, Cavallo E. It does not occur by chance: a mediation model of the influence of workers’ characteristics, work environment factors, and near misses on agricultural machinery-related accidents. Int J Occup Environ Health. 2017;23(1):52–59. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 58.Hwang SA, Gomez MI, Stark AD, St John TL, May JJ, Hallman EM. Severe farm injuries among New York farmers. Am J Ind Med. 2001;40(1):32–41. [DOI] [PubMed] [Google Scholar]
- 59.Ichihara G, Matsukawa T, Kitamura F, Yokoyama K. Risk factors for occupational accidents in agricultural enterprises in Japan. Ind Health. 2019;57:627–636. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 60.Sprince NL, Zwerling C, Lynch CF, et al. Risk factors for agricultural injury: a case-control analysis of Iowa farmers in the Agricultural Health Study. J Agric Saf Health. 2003;9:1–18. [DOI] [PubMed] [Google Scholar]
- 61.Svendsen K, Aas O, Hilt B. Nonfatal occupational injuries in norwegian farmers. Saf Health Work. 2014;5(3):147–151. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 62.Zhou C, Roseman JM. Agriculture-related residual injuries: prevalence, type, and associated factors among Alabama farm operators—1990. J Rural Health. 1995;11(4):251–258. [Google Scholar]
- 63.Hawes NJ, Wiggins AT, Reed DB, Hardin-Fanning F. Poor sleep quality is associated with obesity and depression in farmers. Public Health Nurs. 2019;36(3):270–275. [DOI] [PubMed] [Google Scholar]
- 64.Sanne B, Mykletun A, Moen BE, Dahl AA, Tell GS. Farmers are at risk for anxiety and depression: the Hordaland Health Study. Occup Med (Lond). 2004;54(2):92–100. [DOI] [PubMed] [Google Scholar]
- 65.G J C F, J T, D B, Degruy F III, Riordan C. Stress and distress among Gulf of Mexico shrimp fishermen. Hum Organ. 1998;57(4):404–413. [Google Scholar]
- 66.Rautiainen RH, Lange JL, Hodne CJ, Schneiders S, Donham KJ. Injuries in the Iowa Certified Safe Farm Study. J Agric Saf Health. 2004;10(1):51–63. [DOI] [PubMed] [Google Scholar]
- 67.Siu KC, Huang CK, Beacom M, Bista S, Rautiainen R. The association of sleep loss and balance stability in farmers. J Agromedicine. 2015;20(3):327–331. [DOI] [PubMed] [Google Scholar]
- 68.Lee G, Baek S, Park HW, Kang EK. Sleep quality and attention may correlate with hand grip strength: FARM study. Ann Rehabil Med. 2018;42(6):822–832. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 69.Pickett W, King N, Trask C, et al. Factors related to self-perceived health in rural men and women. J Agromedicine. 2015;20(2):178–187. [DOI] [PubMed] [Google Scholar]
- 70.Lilley R, Feyer AM, Kirk P, Gander P. A survey of forest workers in New Zealand. Do hours of work, rest, and recovery play a role in accidents and injury? J Saf Res. 2002;33(1):53–71. [DOI] [PubMed] [Google Scholar]
- 71.Newman SM, Keefe RF, Brooks RH, Ahonen EQ, Wempe AM. Human factors affecting logging injury incidents in Idaho and the potential for real-time location-sharing technology to improve safety. Safety. 2018;4(4):43. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 72.Roberts SE. Occupational mortality in British commercial fishing, 1976–95. Occup Environ Med. 2004;61(1):16–23. [PMC free article] [PubMed] [Google Scholar]
- 73.Tirilly G The impact of fragmented schedules at sea on sleep, alertness and safety of seafarers. Medicina Marítima. 2004;4(2):96–105. [Google Scholar]
- 74.Jensen OC, Petursdottir G, Holmen IM, Abrahamsen A, Lincoln J. A review of fatal accident incidence rate trends in fishing. Int Marit Health. 2014;65(2):47–52. [DOI] [PubMed] [Google Scholar]
- 75.Eckert C, Baker T, Cherry D. Chronic health risks in commercial fishermen: a cross-sectional analysis from a small rural fishing village in Alaska. J Agromedicine. 2018;23(2):176–185. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 76.Olafsdottir L The relationship between fishermen’s health and sleeping habits. Work. 2004;22(1):57–61. [PubMed] [Google Scholar]
- 77.Garcia GM, de Castro B. Working conditions, occupational injuries, and health among Filipino fish processing workers in Dutch Harbor, Alaska. Workplace Health Saf. 2017;65(5):219–226. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 78.Syron LN, Bovbjerg VE, Mendez-Luck CA, Kincl LD. Safety and health programs in Alaska’s seafood processing industry: interviews with safety and health managers. J Agromedicine. 2019;24(4):449–461. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 79.Gregory JM, Barbosa RN. Seasonal sleep effects on Louisiana aerial applicators’ safety. J Agric Saf Health. 2010;16(1):53–64. [DOI] [PubMed] [Google Scholar]
- 80.Marlenga B, Pahwa P, Hagel L, et al. Impact of long farm working hours on child safety practices in agricultural settings. J Rural Health. 2010;26(4):366–372. [DOI] [PubMed] [Google Scholar]
- 81.Irwin A, Poots J. The human factor in agriculture: an interview study to identify farmers’ non-technical skills. Saf Sci. 2015;74:114–121. [Google Scholar]
- 82.Butler J, Warren MF. Farmers at work and play. Farm Manag. 1990;7(5):251–260. [Google Scholar]
- 83.Lyman S, McGwin G Jr., Enochs R, Roseman JM. History of agricultural injury among farmers in Alabama and Mississippi: prevalence, characteristics, and associated factors. Am J Ind Med. 1999;35(5):499–510. [DOI] [PubMed] [Google Scholar]
- 84.Nowacka WL. Selected workload elements of the machine operators working in timber harvesting. Ergonomic point of view. Acta Sci Pol Silv Colendar Rat Ind Lignar. 2012;11(3):29–36. [Google Scholar]
- 85.Walter AW, Morocho C, King L, et al. Preventing opioid use disorders among fishing industry workers. Int J Environ Res Public Health. 2018;15(4):648. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 86.Mitchell DL, Gallagher TV, Thomas RE. The human factors of implementing shift work in logging operations. J Agric Saf Health. 2008;14(4):391–404. [DOI] [PubMed] [Google Scholar]
- 87.Callejon-Ferre AJ, Perez-Alonso J, Carreno-Ortega A, Velazquez-Marti B. Indices of ergonomic-psycholsociological workplace quality in the greenhouses of Almeria (Spain): crops of cucumbers, peppers, aubergines and melons. Saf Sci. 2011;49(5):746–750. [Google Scholar]
- 88.Bell JL, Helmkamp JC. Non-fatal injuries in the West Virginia logging industry: using workers’ compensation claims to assess risk from 1995 through 2001. Am J Ind Med. 2003;44(5):502–509. [DOI] [PubMed] [Google Scholar]
- 89.McGuinness E, Aasjord HL, Utne IB, Holmen IM. Injuries in the commercial fishing fleet of Norway 2000–2011. Saf Sci. 2013;57:82–99. [Google Scholar]
- 90.Gander P, van den Berg M, Signal L. Sleep and sleepiness of fishermen on rotating schedules. Chronobiology Int. 2008;25(2):389–398. [DOI] [PubMed] [Google Scholar]
- 91.Lizer SK, Petrea RE. Health and safety needs of older farmers: part II. Agricultural injuries. AAOHN J. 2008;56(1):9–14. [DOI] [PubMed] [Google Scholar]
- 92.Binkley M Nova Scotian fishing families coping with the fishersies crisis. Anthropologica. 1996;38(2):197–219. [Google Scholar]
- 93.Binkley M Work organization among Nova Scotian offshore fishermen. Hum Organ. 1990;49(4):395–405. [Google Scholar]
- 94.Darnhofer I, Strauss A. Resilience of family farms: understanding the trade-offs linked to diversification. 11th European IFSA Symposium, Farming Systems Facing Global Challenges: Capacities and Strategies, Proceedings, Berlin, Germany; 2014. [Google Scholar]
- 95.Irwin A, Caruso L, Tone I. Thinking ahead of the tractor: driver safety and situation awareness. J Agromedicine. 2019;24(3):288–297. [DOI] [PubMed] [Google Scholar]
- 96.Spector JT, Krenz J, Calkins M, et al. Associations between heat exposure, vigilance, and balance performance in summer tree fruit harvesters. Appl Ergon. 2018;67:1–8. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 97.Burke Winkelman S, Chaney EH, Bethel JW. Stress, depression and coping among latino migrant and seasonal farmworkers. Int J Environ Res Public Health. 2013;10(5):1815–1830. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 98.Munshi K, Parker DL, Bannerman-Thompson H, Merchant D. Causes, nature, and outcomes of work-related injuries to adolescents working at farm and non-farm jobs in rural Minnesota. Am J Ind Med. 2002;42(2):142–149. [DOI] [PubMed] [Google Scholar]
- 99.Weller NF, Cooper SP, Tortolero SR, Kelder SH, Hassan S. Work-related injury among south Texas middle school students: prevalence and patterns. South Med J. 2003;96(12):1213–1220. [DOI] [PubMed] [Google Scholar]
- 100.Janssen I, Berg RL, Marlenga B, Pickett W. Sleep in farm adolescents. J Rural Health. 2018;28:436–441. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 101.Elliot V, Hagel L, Dosman JA, et al. Resilience of farm women working the third shift. J Agromedicine. 2018;23(1):70–77. [DOI] [PubMed] [Google Scholar]
- 102.Arcury TA, Gabbard S, Bell B, et al. Collecting comparative data on farmworker housing and health: recommendations for collecting housing and health data across places and time. New Solut. 2015;25(3):287–312. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 103.Sandberg JC, Talton JW, Quandt SA, et al. Association between housing quality and individual health characteristics on sleep quality among Latino farmworkers. J Immigr Minor Health. 2014;16(2):265–272. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 104.Netterstrom B, Hansen AM, Isaacson D, Simonsen AM, Weihe P. Physiological reactions to long-term fishing in the Barents Sea. Occup Med (Lond). 2018;68(2):109–115. [DOI] [PubMed] [Google Scholar]
- 105.Lizer SK, Petrea RE. Health and safety needs of older farmers: part I. Work habits and health status. AAOHN J. 2007;55(12):485–491. [DOI] [PubMed] [Google Scholar]
- 106.Shirono S, Iwamoto M, Harada N. Fatigue and its underlying factors among elderly citrus farmers in a rural area of Japan—effect of social support on fatigue and gender difference. Ind Health. 2004;42(1):57–64. [DOI] [PubMed] [Google Scholar]
- 107.Voaklander DC, Dosman JA, Hagel LM, Warsh J, Pickett W, Saskatchewan Farm Injury Cohort Study Team. Farm work exposure of older male farmers in Saskatchewan. Am J Ind Med. 2010;53(7):706–715. [DOI] [PubMed] [Google Scholar]
- 108.Voaklander D, Day L, Dosman J, Hagel L, Pickett W. Older farmers and machinery exposure-cause for concern? Am J Ind Med. 2012;55(11):1044–1050. [DOI] [PubMed] [Google Scholar]
- 109.Grzywacz JG, Chatterjee AB, Quandt SA, et al. Depressive symptoms and sleepiness among Latino farmworkers in eastern North Carolina. J Agromedicine. 2011;16(4):251–260. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 110.Sandberg JC, Nguyen HT, Quandt SA, et al. Sleep quality among Latino farmworkers in North Carolina: examination of the job control-demand-support model. J Immigr Minor Health. 2016;18(3):532–541. [DOI] [PMC free article] [PubMed] [Google Scholar]
- 111.Low JM, Griffith GR, Alston CL. Australian farm work injuries: incidence, diversity and personal risk factors. Aust J Rural Health. 1996;4(3):179–189. [DOI] [PubMed] [Google Scholar]
- 112.Kallioniemi MK, Simola AJ, Kymalainen HR, Vesala HT, Louhelainen JK. Mental symptoms among Finnish farm entrepreneurs. Ann Agric Environ Med. 2009;16(1):159–168. [PubMed] [Google Scholar]
- 113.Nicholls A, Bren L, Humphreys N. Harvester productivity and operator fatigue: working extended hours. Int J Forest Eng. 2004;15(2):57–65. [Google Scholar]
- 114.Gregory JM. Sleep: a good investment in health and safety. J Agromedicine. 2008;13(2):119–131. [DOI] [PubMed] [Google Scholar]
- 115.Levin JL, Gilmore K, Wickman A, et al. Workplace safety interventions for commercial fishermen of the Gulf. J Agromedicine. 2016;21(2):178–189. [DOI] [PubMed] [Google Scholar]
- 116.Bowen J, Hinze A, Griffiths C. Investigating real-time monitoring of fatigue indicators of New Zealand forestry workers. Accid Anal Prev. 2019;126:122–141. [DOI] [PubMed] [Google Scholar]
- 117.Baker A, Ferguson S, Mode N, Wopat P, Conway GA, Health NIfOSa. Fatigue and the commercial fishing industry: an international perspective. The Second International Fishing Industry Safety and Health Conference; 2003:139–142. [Google Scholar]
- 118.Kincl L, Nery M, Syron LN, Bovbjerg V, Jacobson K. Dungeness crab commercial fishermen’s perceptions of injuries inform survey development. Am J Ind Med. 2019;62(3):265–271. [DOI] [PubMed] [Google Scholar]
- 119.Voaklander DC, Umbarger-Mackey ML, Wilson ML. Health, medication use, and agricultural injury: a review. Am J Ind Med. 2009;52(11):876–889. [DOI] [PubMed] [Google Scholar]
- 120.Shah DJ, Shipp EM, Cooper SP, et al. Hand problems in migrant farmworkers. J Agric Saf Health. 2009;15(2):157–169. [DOI] [PubMed] [Google Scholar]
- 121.Cannizzaro E, Cannizzaro C, Martorana D, Moscadini S, Coco DL. Effects of shift work on cardiovascular activity, serum cortisol and white blood cell count in a group of Italian fishermen. EuroMediterranean Biomed J. 2012;2012:109–113. [Google Scholar]
- 122.Myers ML, Durborow RM, Kane AS. Gulf of Mexico seafood harvesters: part 1. Occupational injury and fatigue risk factors. Safety. 2018;4(3):17. [Google Scholar]
- 123.AS AH, Jensen OC, Petursdottir G, Holmen IM. A review of fatigue in fishermen: a complicated and underprioritised area of research. Int Marit Health. 2014;65(3):166–172. [DOI] [PubMed] [Google Scholar]
- 124.Myers ML, Durborow RM, Kane AS. Gulf of Mexico seafood harvesters: part 3. Potential occupational risk reduction measures. Safety. 2018;4(3):22. [Google Scholar]
- 125.Beseler CL, Stallones L. An item response theory analysis of safety knowledge in Colorado farm residents. J Occup Environ Med. 2011;53(4):388–395. [DOI] [PubMed] [Google Scholar]
- 126.Remmen LN, Herttua K, Riss-Jepsen J, Berg-Beckhoff G. Fatigue and workload among Danish fishermen. Int Marit Health. 2017;68(4):252–259. [DOI] [PubMed] [Google Scholar]
- 127.Hall C Agricultural pilot safety in Australia: a survey. Aviat Space Environ Med. 1991;62(3):258–260. [PubMed] [Google Scholar]
- 128.Allen P, Wadsworth E, Smith A. Seafarers’ fatigue: a review of the recent literature. Int Marit Health. 2008;59:81–92. [PubMed] [Google Scholar]
- 129.Caffaro F, Roccato M, Micheletti Cremasco M, Cavallo E. Falls from agricultural machinery: risk factors related to work experience, worked hours, and operators’ behavior. Hum Factors. 2018;60(1):20–30. [DOI] [PubMed] [Google Scholar]
- 130.United States Coast Guard. Fishing, fatigue, and CEMS:2. 2020. Accessed July 31, 2020. http://www.fishsafewest.info/PDFs/Fatigue1.pdf
- 131.Allen P, Wellens B, Smith A. Fatigue in British fishermen. Int Marit Health. 2010;62(3):154–158. [PubMed] [Google Scholar]
- 132.RAND Corporation. Injury and Illness Surveillance of U.S. Agricultural Workers: Assessment of Recommendations and Actions. RAND Corporation; 2017. [PMC free article] [PubMed] [Google Scholar]
- 133.Geiger-Brown J, Trinkoff AM. Is it time to pull the plug on 12-hour shifts? Part 3. Harm reduction strategies if keeping 12-hour shifts. J Nurs Admin. 2010;40(9):357–359. [DOI] [PubMed] [Google Scholar]
- 134.Arcury TA, Grzywacz JG, Sidebottom J, Wiggins MF. Overview of immigrant worker occupational health and safety for the agriculture, forestry, and fishing (AgFF) sector in the southeastern United States. Am J Ind Med. 2013;56(8):911–924. [DOI] [PubMed] [Google Scholar]
- 135.Moyce SC, Schenker M. Migrant workers and their occupational health and safety. Annu Rev Public Health. 2018;39(1):351–365. [DOI] [PubMed] [Google Scholar]
- 136.Backus A Are you sleeping enough? A discussion about fatigue and fishing. Fishermen’s Voice. 2016;21(10):1. [Google Scholar]
Associated Data
This section collects any data citations, data availability statements, or supplementary materials included in this article.
Data Availability Statement
The data that support the findings of this study are available from the corresponding author upon reasonable request.