Skip to main content
PLOS One logoLink to PLOS One
. 2021 Nov 3;16(11):e0259204. doi: 10.1371/journal.pone.0259204

Simulation of the critical nitrogen dilution curve in Jiangxi double-cropped rice region based on leaf dry matter weight

Chun Ye 1,2, Ying Liu 1,*,#, Jizhong Liu 1,*,#, Yanda Li 2,, Binfeng Sun 2,, Shifu Shu 2,, Luofa Wu 2,
Editor: Dali Zeng3
PMCID: PMC8565756  PMID: 34731196

Abstract

In order to investigate the feasibility of using rice critical nitrogen concentration as a nitrogen nutrition diagnosis index, a two-year positioning field gradient experiment using four rice varieties and four nitrogen levels (0, 75, 150, 225 kg·ha–1 for early rice; 0, 90, 180, 270 kg·ha–1 for late rice) was conducted for early and late rice. The critical dilution curves (Nc%) of the double-cropped rice based on leaf dry matter (LDM) were constructed and verified using the field data. Two critical nitrogen dilution curves and nitrogen nutrition indexes (NNI) of rice LDM were constructed for early rice [Nc% = 2.66LDM−0.79, R2 = 0.88, NNI ranged between 0.29–1.74, and the average normalized root mean square error (n-RMSE = 19.35%)] and late rice [Nc% = 7.46LDM−1.42, R2 = 0.91, NNI was between 0.55–1.53, and the average (n-RMSE = 15.14%)]. The relationship between NNI and relative yield was a quadratic polynomial equation and suggested that the optimum nitrogen application rate for early rice was sightly smaller than 150 kg·ha–1, and that for late rice was about 180 kg·ha-1. The developed critical nitrogen concentration dilution curves, based on leaf dry matter, were able to diagnose nitrogen nutrition in the double-cropped rice region.

Introduction

As one of the three major food crops in the world, rice has seen a 3.3-fold increase in yield in the past 50 years, mainly as a result of major resource investment into production, including fertilizer, water, pesticide, and advanced crop breeding technology [1]. Nitrogen is the main nutrient element for crop growth and development. It plays an important role in the synthesis of proteins, nucleic acids, phospholipids, and other organic nitrogen compounds that are necessary for plant growth, improving crop photosynthesis, and enhancing assimilation products [2]. In the double-cropped rice planting environment of Jiangxi, China, which is mainly large in scale and small in area, excessive chemical fertilizer application is common and has led to increasingly prominent environmental pollution. For instance, the water, soil, and the atmosphere are all seriously polluted by nitrogen fertilizer [3]. Therefore, it is important that the application of nitrogen fertilizer is optimized in the double-cropped rice area to improve the utilization rate of nitrogen fertilizer, protect the environment, and realize sustainable agricultural development.

For the rapid and accurate evaluation of crop nitrogen status, most recent studies have used chlorophyll meters and spectral remote sensing image technology for monitoring and diagnosis [46]. However, these methods generally suffer from unreliable diagnostic results when nitrogen is absorbed as a substance [7]. To solve the above problems, Ulrich [8] proposed the concept of a critical nitrogen concentration; that is, the minimum nitrogen concentration required for the maximum growth of crops. Greenwood, Lemaire et al. [911] then proposed new models for C3 and C4 crops that used the nitrogen nutrition index (NNI) to diagnose the nitrogen concentration in grain and forage in order to optimize fertilizer application. However, the model was based on the average value of multiple experiments. When the model was applied to a new climate region, some differences in crop variety parameters were observed. It is thus necessary that localized parameters are studied. The critical nitrogen concentration dilution curve was established based on plant dry matter and plant nitrogen concentration and is used to determine the lowest nitrogen concentration when the aboveground dry matter reaches the maximum growth rate. At present, the model has been applied to potato [12], tomato [13], rape [14], corn [15], wheat [16], and other crops. The critical nitrogen concentration dilution curve model usually combines two individual and population characteristics of plant nitrogen concentration and aboveground biomass. In recent years, agronomists have proposed some new nitrogen concentration models based on the combination of plant nitrogen concentration or image canopy coverage [17], leaf area index [18], or population characteristics of different parts of the plant [19], which have been proved to be good quantitative indicators of crop growth nitrogen nutrition status.

In this study, the critical nitrogen dilution curve of double-cropped rice in the Jiangxi region was established based on leaf dry matter mass to diagnose the nitrogen nutrition status of main rice varieties under different nitrogen application rates. The critical nitrogen concentration curve model was also used to analyze leaves from different genotypes of high-quality rice and determine the critical nitrogen concentration. The purpose of this study was to explore a more convenient and efficient method for nitrogen monitoring in double-cropped rice and provide a theoretical basis for the development of portable diagnostic instruments and field robots.

Materials and methods

Experimental design

Experiment 1

The experiment was carried out from 2019 to 2020 in Gao’an city, Jiangxi province, China. The experimental station was located at 28°25’27" N and 115°12’15" E. The cultivated layer of the experimental field contained 38.80 g·kg–1 organic matter, 2.53 g·kg–1 total nitrogen, 42.4 mg·kg–1 ammonium nitrogen, 1.04 mg·kg–1 nitrate nitrogen, 16.78 mg·kg–1 available phosphorus, and 120.1 mg·kg–1 available potassium and had a pH of 5.5.

The early rice varieties were ‘Zhongjiazao 17’ and ‘Changliangyou 173’, were the main varieties in Jiangxi province, which were treated with four nitrogen levels (0, 75, 150, and 225 kg·ha–1, represented by N0, N75, N250, and N225, respectively) three times, resulting in a total of 24 treatments. The ratio of base fertilizer to tiller fertilizer to panicle fertilizer was 5:3:2. Phosphate fertilizer (60 kg·ha–1) was applied as base fertilizer once, and potassium fertilizer (120 kg·ha–1) was applied together with the same proportion of nitrogen fertilizer. The plot covered an area of 30 m2 (5 m × 6 m). Three plants were transplanted in a north–south direction. The plots were separated by ridges, covered with plastic film, and irrigated independently.

‘Fumeizhan’ and ‘Taiyouhang 1573’ were used as the late rice varieties, which all belong to a large area of cultivated varieties in Jiangxi. A two-factor randomized block design was used in the experiment. Four nitrogen levels (0, 90, 180, and N270 kg·ha−1, represented by N0, N90, N180, and N270, respectively) were set. Nitrogen fertilizer was applied three times, including 50% base fertilizer, 30% tillering fertilizer, and 20% panicle fertilizer. The row spacing between the two plants was 14 cm × 24 cm. Other cultivation measures were consistent with local high-yield cultivation practices.

Experiment 2

The experiment was carried out in 2019 in Jie’bu town, Xingan County, Yi’chun city, China. The experimental site was located at 115°21’3.87" E and 27°45’17.65" N. The cultivated layer of the experimental field contained 28.0 g·kg−1 organic matter, 127.0 mg·kg−1 alkali hydrolyzable nitrogen, 29.0 mg·kg−1 available phosphorus, and 121.0 mg·kg−1 available potassium and had a pH of 5.5. The early rice varieties were ‘Zaoxian618’ and ‘Ganxin 203’, and the late rice varieties were ‘Taiyou 398’ and ‘Wufengyou T025’. The test details and design are shown in Table 1.

Table 1. Basic information on the two experiments.
Data point classification Classification of rice Varieties Transplanting /harvesting date Nitrogen fertilizer levels (kg·ha−1)
Experiment 1 in 2019 Early rice ‘Zhongjiazao 17’, ‘Chanliangyou 173’ 4.23/7.14 Early rice: 0, 75, 150, 225
Late rice: 0, 90, 180, 270
Late rice ‘Fumeizhan’, ‘Taiyouhang 1573’ 7.28/10.30
Experiment 1 in 2020 Early rice ‘Zhongjiazao 17’, ‘Changiangyou 173’ 4.19/7.11
Late rice ‘Fumeizhan’, ‘Taiyouhang 1573’ 7.21/10.24
Experiment 2 in 2019 Early rice ‘Zaoxian 618’, ‘Ganxin 203’ 4.27/7.10
Late rice ‘Taiyou 398’, ‘Wufengyou T025’ 7.21/10.28

Plant sampling and determination of N content in the tissues

Plant sampling

Samples were drawn from five separate hills, and sampling commenced from 16 or 18 days after transplanting in 2019 and 2020. Samples were taken from the tillering stage, jointing stage, booting stage, heading stage, and full heading stage of rice. Five representative rice plants were collected in each plot. Once back at the laboratory, the stems and leaves were separated. The dry matter of the leaves per hectare (t·ha−1) was calculated based on the leaf dry matter per plant multiplied by the number of tillers per hectare. The rice leaves, stems, and panicles were dried at 105°C for 30 min and then dried to a constant weight at 80°C. Then the rice leaves, stems, and panicles were crushed using a small pulverizer, and the nitrogen content of the rice was determined by a Kjeldahl nitrogen analyzer. Finally, the plant nitrogen concentration (PNC) was obtained by multiplying the dry matter mass of leaf, stem, and panicle with the corresponding nitrogen concentration and summing, then dividing by the total dry matter mass of the rice plant.

Determination of yield

At harvest time, the yield was calculated based on three repetitions of a single plot (1 m2) and a single harvest. The average yield of the three plots was used to calculate the treatment yield and was then converted into yield per hectare (t·ha−1). The relative yield (RY) was the ratio of each processing yield divided by the highest yield of the quarter.

Model construction and validation

Model construction

We followed the concept of the Nc dilution curve developed by Justes [20], and the modeling steps were as follows: (a) analysis of variance (ANOVA) of the leaf day matter of each sampling and its corresponding nitrogen concentration, which were divided into a nitrogen-limited group and non-nitrogen limited group; (b) linear fitting of leaf dry matter (LDM) and PNC data of the nitrogen-limited treatment; (c) a vertical line was used to represent the average LDM between the non-nitrogen limited treatment, which was the maximum LDM of this sampling; (d) the intersection coordinate between the oblique line and vertical line of each sampling date was used to determine the nitrogen concentration value. The dilution curve equation of critical nitrogen effect based on LDM is as follows:

Nc%=aLDMb, (1)

where a represents the critical nitrogen concentration when the dry matter of the leaves is 1, and b represents the slope of the critical nitrogen concentration dilution curve.

Model calibration

The data from Experiment 2 were used to test the model. The root mean square error (RMSE) and relative root mean square error (n-RMSE) were used to evaluate the reliability of the model, and the 1:1 relationship between the observed value and the simulated value was drawn to show the fitting degree and prediction effect of the model.

RMSE=1n×i=1nPiOi2 (2)
nRMSE=RMSE/Oi¯×100% (3)

In the equations, n is the number of samples, Pi is the predicted value, Pi¯ is the average value of the predicted value, Oi is the observed value, and Oi¯ is the observed value of the measured value. The model stability was measured according to the standard proposed by Jamieson [21]; that is: n-RMSE < 10%, model stability is excellent; 10% < n-RMSE < 20%, model stability is good; 20% < n-RMSE < 30%, model stability is general; n-RMSE > 30%, model stability is poor.

Nitrogen nutrition index

The NNI was used to evaluate the nitrogen status of rice during its growth period in order to accurately reflect the nitrogen suitability in the rice plants.

NNI=NaNc, (4)

where Na is the measured value of the PNC, and Nc is the critical value of nitrogen concentration. When NNI = 1, the state of nitrogen nutrition is the most appropriate, when NNI > 1, the nitrogen nutrition is in the state of excess, and on the contrary, when NNI < 1, the plant is in the state of under-nutrition.

Data analysis

In this study, Excel 2010 software (Microsoft Corporation, Redmond, WA, USA) was used for data processing and calculation, IBM SPSS 22.0 software (SPSS, Inc., Chicago, IL, USA). was used for one-way ANOVA and multiple comparisons, and Origin 2018 software (OriginLab, Massachusetts, MA, USA) was used for illustrations. In the two experiments, the data from Experiment 1 were used to build the model, and the data from Experiment 2 were used to verify the model.

Results

Dynamic changes in leaf dry matter mass and nitrogen concentration

The data in Table 2 show the dynamic accumulation process of LDM and rice PNC of different varieties of double-cropped rice under different nitrogen application levels. It can be seen from Table 2 that with rice growth and development, the dry matter weight of the leaves of the early and late rice increased continuously from the tillering stage and tended to stabilize until the highest value was reached at the heading stage, following which it decreased slightly at the full heading stage. However, the rice PNC decreased with the development of the growth period, and the changing trend of leaf dry matter and nitrogen concentration in early and late rice was similar. The LDM of ‘Zhongjiazao 17’ ranged from 0.46 to 2.64 t·ha−1 and the PNC ranged from 0.66% to 3.85%, and the LDM of ‘Changliangyou 173’ ranged from 0.37 to 2.72 t ha−1 and the PNC ranged from 0.61% to 4.17%. The LDM of ‘Fumeizhan’ ranged from 1.02 to 3.73 t ha−1 and the PNC ranged from 0.78% to 3.62%, and the LDM of ‘Taiyouhang 1573’ ranged from 1.17 to 3.43 t ha−1 and the PNC ranged from 0.76% to 3.43%.

Table 2. Dynamic changes in leaf dry matter and leaf nitrogen concentration of rice under different nitrogen application rates.

Cultivar Growth stage LDM (t ha−1) PNC (%)
Treatment
N0 N75 N150 N225 N0 N75 N150 N225
Early rice ‘Zhongjiazao 17’ TS 0.49±0.03c 0.75±0.32b 0.79±0.08b 0.81±0.01a 3.20±0.13c 3.46±0.04b 3.78±0.06a 3.76±0.10a
JS 0.82±0.09d 0.97±0.18c 1.03±0.11b 1.48±0.10a 1.80±0.23d 2.03±0.05c 2.30±0.05b 2.74±0.26a
BS 1.18±0.16d 1.58±0.11c 1.85±0.23b 1.95±0.02a 1.55±0.34c 1.42±0.09c 1.86±0.31a 1.77±0.32b
HS 1.44±0.27d 1.99±0.08c 2.25±0.35b 2.48±0.15a 0.94±0.12c 1.41±0.56a 1.48±0.58a 1.36±0.17b
FHS 1.08±0.05d 1.59±0.18c 2.04±0.17b 2.29±0.15a 0.74±0.06d 0.74±0.06c 0.91±0.04b 1.24±0.05a
‘Changliangyou 173’ TS 0.49±0.11d 0.51±0.10c 0.67±0.06b 0.82±0.05a 3.32±0.45b 3.96±0.05a 3.36±0.91b 3.95±0.23a
JS 0.79±0.15b 1.02±0.10b 1.26±0.03a 1.31±0.04a 1.75±0.06d 1.88±0.29c 2.53±0.09a 2.33±0.07b
BS 1.35±0.01d 1.65±0.15c 2.04±0.15a 2.19±0.03b 1.42±0.11d 1.66±0.25c 1.77±0.17b 2.18±0.13a
HS 1.62±0.04d 1.92±0.28c 2.44±0.32b 2.55±0.14a 1.09±0.18c 1.36±0.11b 1.63±0.24a 1.60±0.37a
FHS 1.31±0.13c 1.53±0.20b 2.33±0.34a 2.43±0.08a 0.68±0.07d 0.83±0.04c 1.04±0.08b 1.36±0.31a
N0 N90 N180 N270 N0 N90 N180 N270
Late rice ‘Fumeizhan’ TS 1.12±0.12d 1.33±0.28c 1.61±0.15b 1.93±0.09a 2.41±0.10d 2.56±0.06c 2.65±0.07b 3.06±0.48a
JS 1.54±0.01d 2.13±0.07c 2.25±0.01b 2.59±0.10a 1.86±0.06c 2.15±0.06b 2.09±0.15a 2.02±0.23a
BS 2.20±0.26c 2.75±0.12a 2.82±0.09a 3.38±0.33b 1.14±0.11d 1.58±0.09c 1.74±0.03b 1.87±0.02a
HS 2.52±0.16b 2.94±0.06c 3.37±0.08b 3.68±0.05a 0.98±0.09d 1.19±0.08c 1.33±0.03b 1.44±0.04a
FHS 1.96±0.15d 2.60±0.15c 2.93±0.02b 3.32±0.04a 0.79±0.00d 1.03±0.05c 1.19±0.03b 1.33±0.03a
‘Taiyouhang 1573’ TS 1.22±0.06d 1.38±0.14c 1.81±0.09b 2.13±0.11a 2.25±0.06c 2.46±0.01b 2.84±0.29b 3.35±0.08a
JS 1.99±0.15d 2.24±0.19c 2.28±0.05b 2.73±0.22a 1.40±0.06c 1.72±0.07a 1.69±0.00b 1.94±0.22a
BS 2.26±0.16c 2.81±0.17b 2.96±0.11a 2.96±0.26a 1.23±0.02c 1.52±0.03b 1.72±0.11b 1.84±0.10a
HS 2.98±0.07c 3.20±0.09b 3.39±0.04a 3.39±0.04a 1.07±0.06b 1.25±0.01b 1.42±0.03a 1.56±0.03a
FHS 1.95±0.07d 2.44±0.06c 3.02±0.16b 3.29±0.08a 0.80±0.04b 0.96±0.04b 1.16±0.09a 1.38±0.06a

In the table above, TS represents the tillering stage, JS represents the jointing stage, BS represents the booting stage, HS represents the heading stage, and FHS represents the full heading stage.

LDM, leaf dry matter; PNC, plant nitrogen concentration.

Data in the table represent the average value ± standard error, and those with the same letters are not significantly different (P<0.05).

Critical nitrogen dilution curve based on leaf dry matter

According to the curve construction method proposed by Justes [20], the critical nitrogen concentration dilution curve of double-cropped rice was constructed based on the critical nitrogen content and the corresponding maximum leaf dry matter data points of the four double-cropped rice varieties in Experiment 1. The critical nitrogen concentration of the rice decreased with the increase in dry matter mass, and the changing trend could be fitted by the power function equation. Based on LDM, the critical nitrogen dilution curve models of the different varieties of early and late rice were constructed (Figs 1 and 2). In the early rice model of 2019, parameter a was 2.83 and 2.57 for ‘Zhongjiazao 17’ and ‘Changliangyou 173’, respectively, and parameter b was 0.83 and 0.69, respectively. In the late rice model, parameter a was 6.58 and 6.92 for ‘Taiyouhang 1573’ and ‘Fumeizhan’, respectively, and parameter b was 1.29 and 1.33, respectively.

Fig 1. Critical nitrogen concentration dilution curve of rice based on leaf dry matter in 2019.

Fig 1

Fig 2. Critical nitrogen concentration dilution curve of rice based on leaf dry matter in 2020.

Fig 2

The results of the 2020 data modeling in Experiment 1 were as follows (Fig 2): ‘Zhongjiazao 17’: Nc% = 2.47LDM−0.67, R2 = 0.83; ‘Changliangyou 173’: Nc% = 2.62LDM−0.66, R2 = 0.82; ‘Taiyouhang 1573’: Nc% = 2.38LDM−0.35, R2 = 0.92; ‘Fumeizhan’: Nc% = 2.07LDM−0.39, R2 = 0.99.

In order to further analyze the differences between the four early and late rice varieties, the power function models were linearized; that is, ln(Nc) = ln ab ln LDM. The variance analysis method was used to analyze the difference between the slope and intercept. The results showed that the P-value of the leaf slope and intercept between the two early rice varieties was greater than 0.05 (P>0.05), indicating that there was no significant difference. The P-value of the leaf slope and intercept of different varieties of late rice in 2019 was also not significantly different (P>0.05), but significantly different results were obtained in 2020 (P = 0.012). The preliminary analysis showed that during the period of late rice in 2020, especially from September to October, severe freezing and dew weather occurred in the experimental area, which led to the instability of the late rice model in this year. Therefore, the late rice model of this study was only based on the data from Experiment 1 in 2019. Totally, after synthesizing the critical N concentration dilution curves of the early and late rice, two fixed models of N concentration dilution curves for early and late rice were obtained:

  • Early rice: Nc% = 2.66LDM−0.79, R2 = 0.88;

  • Late rice: Nc% = 7.46LDM−1.42, R2 = 0.91 (data from Experiment 1 in 2019)

Verification of the critical nitrogen dilution curve model

Independent data points were used to verify the model. In this study, the critical nitrogen concentration and the maximum leaf dry matter data points of the four double-cropped rice varieties in Experiment 2 were selected to verify the model. The maximum dry matter in the independent data group was substituted into the Nc% curve, and the simulated and measured values were compared. The fitting degree of the model was visually displayed using a 1:1 histogram. The simulated values of critical nitrogen content were calculated by substituting the measured dry matter data points into Eq (1), and the simulated values were compared with the observed values, as shown in Fig 3. Compared with the measured value and simulated value, the 1:1 graph was used to directly reflect the fitting degree of the model. The RMSE and n-RMSE values of the different varieties were calculated in Table 3. The RMSE values were all below 0.60 and the n-RMSE values were all less than 20%, which indicated that the established early and late rice models could accurately represent the nitrogen dilution process of the plant body and thus could be used to further evaluate the nitrogen nutrition status of double-cropped rice.

Fig 3. Verification of critical nitrogen concentration dilution curve of double-cropped rice based on leaf dry matter (%).

Fig 3

Table 3. Parameter table of the model test results.

Indexes Early rice Late rice
‘Zaoxian 618’ ‘Ganxing 203’ ‘Taiyou 398’ ‘Wufengyou T025’
RMSE 0.59 0.54 0.24 0.41
n-RMSE 19.45% 19.25% 10.78% 19.49%

RMSE, root mean square error; n-RMSE, relative root mean square error.

Changes in the rice NNI during the growth stage

According to the calculation, the change range of the NNI of the two-year double-cropped rice under different nitrogen application rates was as follows (Fig 4). The NNI index increased with the increase of n application rate, and the NNI index of the same variety varied greatly with different growth periods and different years. While from the rice jointing stage to the booting stage, the NNI index all showed an increasing trend and then decreased to the heading stage. As for early rice: N0: 0.54–0.69, N75: 0.73–1.05, N150: 1.02–1.38, N225: 1.17–1.63; late rice: N0: 0.27–0.58, N90: 0.50–0.89, N180: 0.74–1.15, and N270: 0.92–1.29. For early rice, according to the relationship between NNI and the value of 1, NNI of N0 treatment was significantly less than 1, NNI of N150 and N75 treatment were higher than or close to 1, NNI of N225 treatment was slightly higher than 1, which indicated that N150 and N75 treatment could meet the requirement of nitrogen for early rice growth. As for late rice, N0 and N90 were in deficit, N180 was moderate, and N270 was in excess.

Fig 4. Dynamic changes in the nitrogen nutrition index of rice under different nitrogen application rates.

Fig 4

Relationship between NNI and relative yield

The relationship between the NNI and relative yield (RY) of rice was studied. Fig 5 shows that the relationship between NNI and the RY of early and late rice was quadratic. The RY first increased and then decreased with the increase in NNI. For early rice, the determination coefficient of the regression equation was highest at the heading stage, at 0.85, reaching a significant level. The maximum value of RY was 0.96 when NNI was 1.04. As for late rice, the coefficient of determination of the regression equation was highest at the booting stage, being 0.82, reaching a significant level. The maximum value of RY was 0.94 when those of NNI was 0.92.

Fig 5. Relationship between nitrogen nutrition index (NNI) and the Relative Yield (RY) of rice.

Fig 5

Discussion

The agronomic benefits of nitrogen application for increasing rice production have been recognized, and the critical nitrogen concentration dilution curve is an important crop nitrogen nutrition diagnosis method that is used in many countries. Preliminary studies proposed that the nitrogen concentration dilution curve could be constructed by using the dry matter from different parts of crops [2224]. In this study, the curve equation of critical nitrogen change in rice was established using the relationship between the leaf dry matter and nitrogen concentration of the LDM and PNC of the fractionated rice (Nc% = 2.66LDM−0.79 and Nc% = 7.46LDM−1.42 for early and late rice, respectively). In the critical nitrogen concentration dilution curve, parameter a represents the plant nitrogen content when the dry matter is 1 t·ha−1 and represents the intrinsic nitrogen demand characteristics in the early stage of crop growth [25]. Parameter b represents the critical nitrogen concentration, which decreases with the increase in the dry matter mass in the upper part of the ground. In this study, the parameters a and b in the models of early rice were lower than those of the late rice models, which indicated that the nitrogen demand was large in the early stage of late rice growth. The reason may be that the temperature was higher in the late rice period, during which the rice grew fast and thus the process of nitrogen dilution was accelerated. At the same time, there were limited differences in the values of a and b of the critical nitrogen concentration dilution curves in different years, among which the difference in the models in early rice was not significant, while the values of a and b in the model of late rice 2020 were smaller than in 2019. The reason for the great difference may be that there was colder and more exposed windy weather in Jiangxi Province from late September to early October in 2020, which resulted in the decrease in the nitrogen dilution rate of the rice leaves, causing the parameters a and b to be significantly lower than that of the previous year. This result is consistent with that of Shimono et al. [26].

Different rice genotypes have different sensitivities to nitrogen fertilizer [27]. In this study, parameter b from rice variety ‘Zhongjiazao’ was greater than that from rice variety ‘Changliangyou 173’, parameter b from rice variety ‘Fumeizhan’ was smaller than that from rice variety ‘Taiyouhang 1573’, while parameter a exhibited uncertainty. Compared with previous studies (Table 4), the a value of rice in south China was higher than that in north China, may be because low temperature led to low nitrogen uptake, so nitrogen accumulation in north China was lower [28]. The parameter a in this study was lower than that in reference [17, 29], and according to Lemaire [9], the correlation between the initial N uptake capacity of crops and the amount of N supplied by soil at the early growth stage can also be considered as a reason for the difference. The value b from early and late rice was all greater than those of the literature, and the difference between the curve and the curve constructed in the northern and central rice areas was obvious [17, 29]. The reason may be that the leaf dry matter weight is less than the plant dry matter weight, which leads to the significant increase of the ratio of plant nitrogen nutrition to dry matter. These above results indicated that the regional impact model parameters need to be established in different regions.

Table 4. The model comparison results.

Region Parameter a Parameter b Model accuracy Reference
Northern rice growing area in China 1.96 0.56 0.87 Song et al. [28]
Double-cropped rice area in China Early rice: 3.37 0.44 0.82 He et al. [29]
Late rice: 3.69 0.34 0.78
Rice wheat rotation area in Central China 3.33 0.26 0.86 Wang et al. [17]

NNI is widely used in crop nitrogen nutrition diagnosis, but it is difficult to achieve NNI = 1 in agricultural production. Plant sensitivity to nitrogen fertilizer differs across seasons. The results from this research show that the optimum nitrogen application rate of early rice was slightly smaller than 150 kg·ha−1 and of late rice was slightly less than 180 kg·ha−1, respectively. As for this study, the optimum nitrogen application rate of rice was similar to that of local experience fertilization (165–180 kg·ha−1), and was similar to that of Zhu et al. [30]. who proposed the total nitrogen application (105 kg·ha−1 for early rice and 146 kg·ha−1 for late rice) could achieve the goal of high yield. While only four nitrogen application rates were set in both early and late rice in this study, so the optimal nitrogen application rate was much less explored, which needs further study. According to the relationship between NNI and relative yield, the relative yield was 95% of the maximum yield when NNI was within the suitable range, which indicated that proper fertilization in double cropping rice of Jiangxi Province was beneficial to the increase of rice yield.

Conclusion

The plant nitrogen content of double-cropped rice in this study decreased with the increase in LDM, and different rice genotypes and plant seasons had different sensitivities to nitrogen fertilizer. In this study, the critical nitrogen dilution curve of double-cropped rice in Jiangxi based on LDM was established using four varieties across two years, which confirmed the stability of the parameters. The model can be used to diagnose the nitrogen nutrition status of Jiangxi rice region and effectively guide the scientific application of nitrogen fertilizer. According to the NNI model established in this study, it is recommended that the optimal nitrogen application rate for early rice is sightly smaller than 150 kg·ha−1 and that for late rice is about 180 kg·ha−1 in the study area. The nitrogen application rate of farmers in this area is high, and thus the potential for reducing fertilizer application based on these findings in this study is great.

Supporting information

S1 Data

(XLS)

Acknowledgments

We thank LetPub (www.letpub.com) for its linguistic assistance during the preparation of this manuscript.

Data Availability

All relevant data are within the manuscript and its Supporting information files.

Funding Statement

This research was jointly supported by the Key-Area Research and Development Program of Jiangxi Province [20202BBFL63046, 20202BBFL63044], The National Natural Science Foundation of China (41961048), and the National Key Research and Development Program of China (2016YFD0300608).

References

  • 1.Yan X, Jin J-Y, He P, Liang M-Z. Recent advances in technology of increasing fertilizer use efficiency. Zhongguo Nong Ye Ke Xue. 2008;41(2):450–459. doi: 10.3864/j.issn.0578-1752.2008.02.019 (in Chinese) [DOI] [Google Scholar]
  • 2.Cui S, Zhang J, Tong B, Ma L, Ma W. Spatiotemporal variation of nitrogen indicators related to agricultural green development in China. Zhongguo Sheng Tai Nong Ye Xue Bao. 2020;(8):1141–1155. (in Chinese) [Google Scholar]
  • 3.Wu J, Pan X, Shi Q, Wang S, Li T, Li Q. Problems and countermeasures in fertilization of double-cropping rice in Jiangxi Province. China Rice. 2012;18(5):33–35. doi: 10.3969/j.issn.1006-8082.2012.05.009 (in Chinese) [DOI] [Google Scholar]
  • 4.Yue X, Hu Y, Zhang H, Schmidhalter U. Evaluation of both SPAD reading and spad index on estimating the plant nitrogen status of winter wheat. Int J Plant Prod. 2020;14(1):67–75. doi: 10.1007/s42106-019-00068-2 [DOI] [Google Scholar]
  • 5.Zhao B, Duan A, Ata-Ul-Karim ST, Liu Z, Chen Z, Gong Z, et al. Exploring new spectral bands and vegetation indices for estimating nitrogen nutrition index of summer maize. Eur J Agron. 2018;93:113–125. doi: 10.1016/j.eja.2017.12.006 [DOI] [Google Scholar]
  • 6.Shi P, Wang Y, Xu J, Zhao Y, Yang B, Yuan Z, et al. Rice nitrogen nutrition estimation with RGB images and machine learning methods. Comput Electron Agric. 2021;180:105860. doi: 10.1016/j.compag.2020.105860 [DOI] [Google Scholar]
  • 7.Ata-Ul-Karim ST, Zhu Y, Liu X, Cao Q, Tian Y, Cao W. Comparison of different critical nitrogen dilution curves for nitrogen diagnosis in rice. Sci Rep. 2017;7:42679. doi: 10.1038/srep42679 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 8.Ulrich A. Physiological bases for assessing the nutritional requirements of plants. Annu Rev Plant Physiol. 1952;3(1):207–228. doi: 10.1146/annurev.pp.03.060152.001231 [DOI] [Google Scholar]
  • 9.Greenwood DJ, Gastal F, Lemaire G, Draycott A, Millard P, Neeteson JJ. Growth rate and % N of field grown crops: Theory and experiments. Ann Bot. 1991;67(2):181–190. doi: 10.1093/oxfordjournals.aob.a088118 [DOI] [Google Scholar]
  • 10.Greenwood DJ, Lemaire G, Gosse G, Cruz P, Draycott A, Neeteson JJ. Decline in percentage N of C3 and C4 crops with increasing plant mass. Ann Bot. 1990;66(4):425–436. doi: 10.1093/oxfordjournals.aob.a088044 [DOI] [Google Scholar]
  • 11.Evans JR. Photosynthesis and nitrogen relationships in leaves of C3 plants. Oecologia. 1989;78(1):9–19. doi: 10.1007/BF00377192 [DOI] [PubMed] [Google Scholar]
  • 12.Zhang J-K, Li F, Li Y-J, Yang H-B, Jia Y-Z, Liu Y-F, et al. Establishment and validation of critical nitrogen dilution curve based on the total plant biomass and nitrogen concentration. J Plant Nutr Fertil. 2020;26(9):1691–1701. (in Chinese) [Google Scholar]
  • 13.Wang X, Ma F, Diao M, Fan H, Cui J, Jia B, et al. Simulation of critical nitrogen concentration, nitrogen uptake and nitrogen nutrition index of processing tomato with drip irrigation. Nongye Gongcheng Xuebao. 2013;29(18):99–108. doi: 10.3969/j.issn.1002-6819.2013.18.013 (in Chinese) [DOI] [Google Scholar]
  • 14.Liu Q, Ren T, Zhang Y, Liao S, Li X, Cong R, et al. Determination and Application of a Critical Nitrogen Dilution Curve for Direct-Sowing Winter Oilseed Rape in Central China. Zhongguo Nong Ye Ke Xue. 2019;52(16):2835–2844. doi: 10.3864/j.issn.0578-1752.2019.16.009 (in Chinese) [DOI] [Google Scholar]
  • 15.Li Z, Song M, Feng H. Development and validation of critical nitrogen content curve for maize in Guanzhong area. Nongye Gongcheng Xuebao. 2015;31(13):135–141. doi: 10.11975/j.issn.1002-6819.2015.13.019 (in Chinese) [DOI] [Google Scholar]
  • 16.Ma X, Zhang X, Huang Y, Ye Y. Establishment and application of critical nitrogen dilution curve for wheat based on leaf dry matter. Plant Physiol Commun. 2017;53(7):1313–1321. (in Chinese) [Google Scholar]
  • 17.Wang Y, Shi P, Zhang G, Ran J, Shi W, Wang D. A critical nitrogen dilution curve for japonica rice based on canopy images. Field Crops Res. 2016;198:93–100. doi: 10.1016/j.fcr.2016.08.032 [DOI] [Google Scholar]
  • 18.Jia B, Fu J. Critical nitrogen dilution curve of drip-irrigated maize at vegetative growth stage based on leaf area index. Nongye Gongcheng Xuebao. 2020;36(6):66–73. doi: 10.11975/j.issn.1002-6819.2020.06.008 (in Chinese) [DOI] [Google Scholar]
  • 19.Su W, Xie J, Han J, Liu T, Han Q. Construction of critical nitrogen dilution curve based on dry matter in diffe rent organs of summer maize and estimation of grain yield. Zuo Wu Xue Bao. 2021;47(3):530–545. (in Chinese) [Google Scholar]
  • 20.Justes E. Determination of a critical nitrogen dilution curve for winter wheat crops. Ann Bot. 1994;74(4):397–407. doi: 10.1006/anbo.1994.1133 [DOI] [Google Scholar]
  • 21.Jamieson PD, Porter JR, Wilson DR. A test of the computer simulation model ARCWHEAT1 on wheat crops grown in New Zealand. Field Crops Res. 1991;27(4):337–350. doi: 10.1016/0378-4290(91)90040-3 [DOI] [Google Scholar]
  • 22.Cao Q, Tian X, Ma J, Yao X, Liu X, Tian Y, et al. Research progress in critical nitrogen dilution curve of three main grain crops in China. Nanjing Nong Ye Da Xue Xue Bao. 2020;43(3):392–402. (in Chinese) [Google Scholar]
  • 23.Lu J, Geng C, Cui X, Li M, Hu T. Determination of leaf critical nitrogen dilution curve based on leaf area index of summer maize. Nongye Jixie Xuebao. 2021;(1):1–14. (in Chinese) [Google Scholar]
  • 24.Shi X, Cai H. Estimation of nitrogen nutrition index of greenhouse tomato under different water and nitrogen fertilizer treatments based on leaf SPAD. Nongye Gongcheng Xuebao. 2018;34(17):116–126. doi: 10.11975/j.issn.1002-6819.2018.17.016 (in Chinese) [DOI] [Google Scholar]
  • 25.Lemaire G, Oosterom Ev, Sheehy J, Jeuffroy MH, Massignam A, Rossato L. Is crop N demand more closely related to dry matter accumulation or leaf area expansion during vegetative growth? Field Crops Res. 2007;100(1):91–106. doi: 10.1016/j.fcr.2006.05.009 [DOI] [Google Scholar]
  • 26.Shimono H, Hasegawa T, Asaishi H, Ito A, Kashiguchi C, Fujimura S, et al. Effects of cool water temperature on nitrogen uptake and partitioning in paddy rice. Jpn J Crop Sci. 2000;40(69):88–89. doi: 10.20751/hdanwakai.40.0_37 [DOI] [Google Scholar]
  • 27.Gweyi-Onyango JP, Ntinyari W, OgollaEgesa A, Mose R, Njinju S, Giweta M, et al. Differences in seasons and rice varieties provide opportunities for improving nitrogen use efficiency and management in irrigated rice in Kenya. Environ Res Lett. 2021;16(7):075003. doi: 10.1088/1748-9326/ac03dd [DOI] [Google Scholar]
  • 28.Song L, Wang S, Ye W. Establishment and application of critical nitrogen dilution curve for rice based on leaf dry matter. Agronomy. 2020;10(3):367. doi: 10.3390/agronomy10030367 [DOI] [Google Scholar]
  • 29.He Z, Qiu X, Ata-Ul-Karim ST, Li Y, Liu X, Cao Q, et al. Development of a critical nitrogen dilution curve of double cropping rice in south China. Front Plant Sci. 2017;8:638. doi: 10.3389/fpls.2017.00638 [DOI] [PMC free article] [PubMed] [Google Scholar]
  • 30.Zhu Q, Lu Y, Liao Y, Nie J, Zhou X, Nie X, et al. Effects of nitrogen application rates on yield and nitrogen, phosphorus and potassium uptake of double cropping rice. J Soil Water Conserv. 2019;33(2):183–188. doi: 10.13870/j.cnki.stbcxb.2019.02.029 [DOI] [Google Scholar]

Decision Letter 0

Dali Zeng

10 Jun 2021

PONE-D-21-10238

Simulation of the critical nitrogen dilution curve in double-cropped rice based on leaf dry matter weight

PLOS ONE

Dear Dr. Chun,

Thank you for submitting your manuscript to PLOS ONE. After careful consideration, we feel that it has merit but does not fully meet PLOS ONE’s publication criteria as it currently stands. Therefore, we invite you to submit a revised version of the manuscript that addresses the points raised during the review process.

Please submit your revised manuscript by Jul 25 2021 11:59PM. If you will need more time than this to complete your revisions, please reply to this message or contact the journal office at plosone@plos.org. When you're ready to submit your revision, log on to https://www.editorialmanager.com/pone/ and select the 'Submissions Needing Revision' folder to locate your manuscript file.

Please include the following items when submitting your revised manuscript:

  • A rebuttal letter that responds to each point raised by the academic editor and reviewer(s). You should upload this letter as a separate file labeled 'Response to Reviewers'.

  • A marked-up copy of your manuscript that highlights changes made to the original version. You should upload this as a separate file labeled 'Revised Manuscript with Track Changes'.

  • An unmarked version of your revised paper without tracked changes. You should upload this as a separate file labeled 'Manuscript'.

If you would like to make changes to your financial disclosure, please include your updated statement in your cover letter. Guidelines for resubmitting your figure files are available below the reviewer comments at the end of this letter.

If applicable, we recommend that you deposit your laboratory protocols in protocols.io to enhance the reproducibility of your results. Protocols.io assigns your protocol its own identifier (DOI) so that it can be cited independently in the future. For instructions see: http://journals.plos.org/plosone/s/submission-guidelines#loc-laboratory-protocols. Additionally, PLOS ONE offers an option for publishing peer-reviewed Lab Protocol articles, which describe protocols hosted on protocols.io. Read more information on sharing protocols at https://plos.org/protocols?utm_medium=editorial-email&utm_source=authorletters&utm_campaign=protocols.

We look forward to receiving your revised manuscript.

Kind regards,

Dali Zeng

Academic Editor

PLOS ONE

Journal Requirements:

When submitting your revision, we need you to address these additional requirements.

1. Please ensure that your manuscript meets PLOS ONE's style requirements, including those for file naming. The PLOS ONE style templates can be found at 

https://journals.plos.org/plosone/s/file?id=wjVg/PLOSOne_formatting_sample_main_body.pdf and 

https://journals.plos.org/plosone/s/file?id=ba62/PLOSOne_formatting_sample_title_authors_affiliations.pdf

2. We note that the grant information you provided in the ‘Funding Information’ and ‘Financial Disclosure’ sections do not match. 

When you resubmit, please ensure that you provide the correct grant numbers for the awards you received for your study in the ‘Funding Information’ section.

3. We note that you have stated that you will provide repository information for your data at acceptance. Should your manuscript be accepted for publication, we will hold it until you provide the relevant accession numbers or DOIs necessary to access your data. If you wish to make changes to your Data Availability statement, please describe these changes in your cover letter and we will update your Data Availability statement to reflect the information you provide.

Additional Editor Comments (if provided):

We encourage authors to add more rice varieties for this research, or repeat the research in another year or place before submitting again.

[Note: HTML markup is below. Please do not edit.]

Reviewers' comments:

Reviewer's Responses to Questions

Comments to the Author

1. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented.

Reviewer #1: Partly

Reviewer #2: Yes

**********

2. Has the statistical analysis been performed appropriately and rigorously?

Reviewer #1: No

Reviewer #2: Yes

**********

3. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified.

Reviewer #1: No

Reviewer #2: Yes

**********

4. Is the manuscript presented in an intelligible fashion and written in standard English?

PLOS ONE does not copyedit accepted manuscripts, so the language in submitted articles must be clear, correct, and unambiguous. Any typographical or grammatical errors should be corrected at revision, so please note any specific errors here.

Reviewer #1: Yes

Reviewer #2: Yes

**********

5. Review Comments to the Author

Please use the space provided to explain your answers to the questions above. You may also include additional comments for the author, including concerns about dual publication, research ethics, or publication ethics. (Please upload your review as an attachment if it exceeds 20,000 characters)

Reviewer #1: Rice is the staple food of more than half the world's population. Improving nitrogen use efficiency to increase rice yield has played an important role in promoting sustainable agricultural development. Increasing nitrogen application to increase rice yield has been widely used in modern agriculture. The relationship between nitrogen use and rice yield has always been the focus of attention of rice cultivators and breeders. Based on the accumulation of dry matter in the leaves, the study on the most suitable nitrogen application amount of double cropping rice is beneficial to the protection of environment and the sustainable development of agriculture. However, there are still some deficiencies that need to be further refined before publication.

1. The biggest defect of this manuscript is that the author only used two early rice varieties and two late rice varieties to carry out the experiment. Is the sample representative enough? Is it reasonable to use the data obtained from different nitrogen gradients of two varieties for statistical analysis and model establishment?

2. According to the above problems, the scope of the topics in the manuscript is too large and needs to be adjusted.

3. The ultimate goal of using nitrogen fertilizer is to improve yield. This paper analyzes the relationship between leaf dry matter weight and leaf nitrogen content, and the relationship between NNI and yield, so as to evaluate the best nitrogen application rate for high yield. However, due to the significant difference of nutrient transport efficiency among different varieties, it is suggested that the relationship between leaf dry matter weight, total N and yield should be analyzed.

4. It is shown in Figure 4 that there are great differences in NNI among different varieties or in different growth stages of the same variety. How does the author get the conclusion that "nitrogen absorption in the double cropped rice mainly occurs in the vegetable growth stage (joining stage and booting stage), and the nitrogen nutrition status at this stage directly determines the final yield and composition"? It needs to be supported by reasonable data or references.

5. Improve the quality of the text, such as "nitrogen nutrition index" and "NNI" in many parts of the text, which is suggested to be unified; in Table 1, the name of variety is wrongly written, such as "changiangyou 173", …… etc.

6. The definition of the picture in the paper is poor, so it is suggested to replace the picture with higher definition.

Reviewer #2: Review on the publication by Chun et al. under the title 'Simulation of the critical nitrogen dilution curve in double-cropped rice based on leaf dry matter weight.'

The article is connected with agronomically important species. The article is perfectly prepared. It's contain a lot of new and interesting results for scientific community. I do recommend it for publication

**********

6. PLOS authors have the option to publish the peer review history of their article (what does this mean?). If published, this will include your full peer review and any attached files.

If you choose “no”, your identity will remain anonymous but your review may still be made public.

Do you want your identity to be public for this peer review? For information about this choice, including consent withdrawal, please see our Privacy Policy.

Reviewer #1: No

Reviewer #2: No

[NOTE: If reviewer comments were submitted as an attachment file, they will be attached to this email and accessible via the submission site. Please log into your account, locate the manuscript record, and check for the action link "View Attachments". If this link does not appear, there are no attachment files.]

While revising your submission, please upload your figure files to the Preflight Analysis and Conversion Engine (PACE) digital diagnostic tool, https://pacev2.apexcovantage.com/. PACE helps ensure that figures meet PLOS requirements. To use PACE, you must first register as a user. Registration is free. Then, login and navigate to the UPLOAD tab, where you will find detailed instructions on how to use the tool. If you encounter any issues or have any questions when using PACE, please email PLOS at figures@plos.org. Please note that Supporting Information files do not need this step.

PLoS One. 2021 Nov 3;16(11):e0259204. doi: 10.1371/journal.pone.0259204.r002

Author response to Decision Letter 0


22 Jul 2021

Dear Editors and Reviewers,

Thank you for your letter and for the reviewer’s comments concerning our manuscript entitled " Simulation of the critical nitrogen dilution curve in double-cropped rice based on leaf dry matter weight" (ID: PONE-D-21-10238). Those comments are all valuable and helpful for revising and improving our paper, as well as important guiding significance to our research. We have studied comments carefully and have made correction which we hope meet with approval. Revised portion are marked in red in the paper and the reviewers’ comments are responded as follows:

Attachment

Submitted filename: rebuttal letter.doc

Decision Letter 1

Dali Zeng

15 Oct 2021

Simulation of the critical nitrogen dilution curve in Jiangxi double-cropped rice region based on leaf dry matter weight

PONE-D-21-10238R1

Dear Dr. Chun,

We’re pleased to inform you that your manuscript has been judged scientifically suitable for publication and will be formally accepted for publication once it meets all outstanding technical requirements.

Within one week, you’ll receive an e-mail detailing the required amendments. When these have been addressed, you’ll receive a formal acceptance letter and your manuscript will be scheduled for publication.

An invoice for payment will follow shortly after the formal acceptance. To ensure an efficient process, please log into Editorial Manager at http://www.editorialmanager.com/pone/, click the 'Update My Information' link at the top of the page, and double check that your user information is up-to-date. If you have any billing related questions, please contact our Author Billing department directly at authorbilling@plos.org.

If your institution or institutions have a press office, please notify them about your upcoming paper to help maximize its impact. If they’ll be preparing press materials, please inform our press team as soon as possible -- no later than 48 hours after receiving the formal acceptance. Your manuscript will remain under strict press embargo until 2 pm Eastern Time on the date of publication. For more information, please contact onepress@plos.org.

Kind regards,

Dali Zeng

Academic Editor

PLOS ONE

Additional Editor Comments (optional):

Reviewers' comments:

Reviewer's Responses to Questions

Comments to the Author

1. If the authors have adequately addressed your comments raised in a previous round of review and you feel that this manuscript is now acceptable for publication, you may indicate that here to bypass the “Comments to the Author” section, enter your conflict of interest statement in the “Confidential to Editor” section, and submit your "Accept" recommendation.

Reviewer #1: (No Response)

Reviewer #2: All comments have been addressed

Reviewer #3: All comments have been addressed

**********

2. Is the manuscript technically sound, and do the data support the conclusions?

The manuscript must describe a technically sound piece of scientific research with data that supports the conclusions. Experiments must have been conducted rigorously, with appropriate controls, replication, and sample sizes. The conclusions must be drawn appropriately based on the data presented.

Reviewer #1: No

Reviewer #2: Yes

Reviewer #3: Yes

**********

3. Has the statistical analysis been performed appropriately and rigorously?

Reviewer #1: Yes

Reviewer #2: Yes

Reviewer #3: Yes

**********

4. Have the authors made all data underlying the findings in their manuscript fully available?

The PLOS Data policy requires authors to make all data underlying the findings described in their manuscript fully available without restriction, with rare exception (please refer to the Data Availability Statement in the manuscript PDF file). The data should be provided as part of the manuscript or its supporting information, or deposited to a public repository. For example, in addition to summary statistics, the data points behind means, medians and variance measures should be available. If there are restrictions on publicly sharing data—e.g. participant privacy or use of data from a third party—those must be specified.

Reviewer #1: Yes

Reviewer #2: Yes

Reviewer #3: Yes

**********

5. Is the manuscript presented in an intelligible fashion and written in standard English?

PLOS ONE does not copyedit accepted manuscripts, so the language in submitted articles must be clear, correct, and unambiguous. Any typographical or grammatical errors should be corrected at revision, so please note any specific errors here.

Reviewer #1: Yes

Reviewer #2: Yes

Reviewer #3: Yes

**********

6. Review Comments to the Author

Please use the space provided to explain your answers to the questions above. You may also include additional comments for the author, including concerns about dual publication, research ethics, or publication ethics. (Please upload your review as an attachment if it exceeds 20,000 characters)

Reviewer #1: The local main rice varieties were specific and could not represent the diversity of early and late rice varieties.The small sample size is still the fatal shortcoming of this paper.

Reviewer #2: All my previous concerns have been well addressed in this revised version. This work reported the developed critical nitrogen concentration dilution curves, based on leaf dry matter, were able to diagnose nitrogen nutrition in the double-cropped rice region, and the results are interesting and meaningful.

Reviewer #3: (No Response)

**********

7. PLOS authors have the option to publish the peer review history of their article (what does this mean?). If published, this will include your full peer review and any attached files.

If you choose “no”, your identity will remain anonymous but your review may still be made public.

Do you want your identity to be public for this peer review? For information about this choice, including consent withdrawal, please see our Privacy Policy.

Reviewer #1: No

Reviewer #2: No

Reviewer #3: No

Acceptance letter

Dali Zeng

22 Oct 2021

PONE-D-21-10238R1

Simulation of the critical nitrogen dilution curve in Jiangxi double-cropped rice region based on leaf dry matter weight

Dear Dr. Ye:

I'm pleased to inform you that your manuscript has been deemed suitable for publication in PLOS ONE. Congratulations! Your manuscript is now with our production department.

If your institution or institutions have a press office, please let them know about your upcoming paper now to help maximize its impact. If they'll be preparing press materials, please inform our press team within the next 48 hours. Your manuscript will remain under strict press embargo until 2 pm Eastern Time on the date of publication. For more information please contact onepress@plos.org.

If we can help with anything else, please email us at plosone@plos.org.

Thank you for submitting your work to PLOS ONE and supporting open access.

Kind regards,

PLOS ONE Editorial Office Staff

on behalf of

Dr. Dali Zeng

Academic Editor

PLOS ONE


Articles from PLoS ONE are provided here courtesy of PLOS

RESOURCES