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. 2019 Jun 25;9(1):010811. doi: 10.7189/jogh.09.010811

Table 4.

Predicted probabilities of the correct assessment for illnesses of observed sick children seen by HSAs in districts using the iCCM mobile application and paper tools*

Symptoms
iCCM mobile application
Paper tools
P-value†
N
Weighted %
95% CI
Weighted %
95% CI
Children checked for presence of cough 987 97.9 96.6, 99.2 90.7 85.5, 95.9 0.001
Children checked for presence of diarrhoea 987 93.9 90.8, 96.9 87.4 82.1, 92.6 0.026
Children checked for presence of fever 987 96.7 94.4, 99.0 92.6 87.6, 97.6 0.056
Children with cough assessed for presence of fast breathing through counting of respiratory rates 716 97.1 94.3, 99.8 95.7 92.6, 98.9 0.463
Children with cough assessed for the presence of fast breathing in which HSA counted respiratory rate within ± 3 breaths of gold standard (N = 699) 699 84.8 81.3, 88.3 86.6 82.2, 91.0 0.488
Children with fever assessed for malaria with rapid diagnostic test 652 83.8 73.3, 94.2 88.6 81.9, 95.3 0.507
Children assessed for three general danger signs 987 87.6 83.6, 91.6 78.6 73.3, 84.0 0.009
Children checked if able to drink or eat anything 987 94.9 92.9, 97.0 89.4 86.0, 92.9 <0.001
Children checked if vomit everything 987 94.1 90.7, 97.6 91.1 86.9, 95.4 0.270
Children checked if have convulsions 987 92.8 90.7, 94.8 84.0 80.1, 87.9 <0.001
Children assessed for five physical danger signs 987 79.9 75.9, 84.0 61.7 55.0, 68.4 <0.001
Children checked for chest indrawing 987 94.6 92.8, 96.3 78.2 73.5, 82.9 <0.001
Children checked if sleepy or unconscious 987 98.6 97.0, 100.1 96.5 93.6, 99.5 <0.001
Children checked for palmar pallor 987 99.1 98.5, 99.8 89.6 84.6, 94.6 <0.001
Children checked for malnutrition with MUAC tape 987 86.3 82.9, 89.7 82.6 77.6, 87.6 0.182
Children checked if swelling of both feet 987 96.6 95.0, 98.2 85.9 80.9, 91.0 <0.001

iCCM – integrated community case management, HSA – health surveillance assistant, MUAC – mid-upper arm circumference

*Probabilities adjusted for child characteristics (age and gender), HSA characteristics (gender, highest education level, tenure as an HSA, type and duration since most recent iCCM training, patient case load, and village clinic location), and district characteristics (access to improved water source and median number of years of women’s education) using logistic regression with standard errors clustered at the HSA level.

†Compared against Holm-Bonferroni adjusted significance levels.