In Vitro Assessment of Kurdish Rice Genotypes in Response to PEG-Induced Drought Stress

Rice (Oryza sativa L.) is productively affected by different environmental factors, including biotic and abiotic stress. The objectives of this research were to evaluate the genetic distinction among Kurdish rice genotypes using the simple sequence repeats (SSRs) molecular markers and to perform in vitro tests to characterize the drought tolerance of six local rice genotypes. The polymorphic information content (PIC) varied from 0.38 to 0.84 with an average of 0.56. The genetic distance ranged from 0.33 to 0.88. Drought stress had a significant impact (p ≤ 0.05) on callus growth parameters. Enzymatic antioxidant systems were predicted and exhibited a significant variation. The findings revealed that proline levels increase in proportion to polyethylene glycol (PEG) concentrations. Kalar and Gwll Swr genotypes showed the worst performances in phenotypic and biochemical traits, while Choman and Shawre exhibited the best phenotypic and biochemical performances. A positive and substantial relationship between callus fresh weight (CFW) and callus dry weight (CDW) was found under stressful and optimized conditions. Callus induction (CI) was positively and significantly associated with the catalase activity (CAT) in all stressed treatments. Based on the results for callus growth and the biochemical parameters under stress conditions, a remarkable genotype distinction, based on the tolerance reaction, was noted as follows: PEG resistant > susceptible, Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr > Kalar. The CI and CAT characteristics were considered as reliable predictors of drought tolerance in rice genotypes.


Introduction
Rice (Oryza sativa L.) refers to the Poaceae (Gramineae) family of monocotyledonous plants. It is one of the world's three strategic crops and forms the staple diet of more than half of the world's population. The global cultivation of rice has been evaluated to be about 850 million tons, and the rice-growing area is estimated to be 256 million hectares. Asia is the leading producer of rice in the world, accounting for around 90% of the world's crops [1]. Over 75% of global production is influences plant growth and creates disparities in plant mineral nutrition, resulting in secondary consequences. In rice, tissue culture techniques are well developed and used [15][16][17]. The collection of genotypes with various physiological reactions to different stresses would give growers new options under diverse environmental constraints. Thus, the objectives of this research were to test the genetic distinction among Kurdish rice genotypes using simple sequence repeats (SSRs) molecular markers and to evaluate the ability of six local rice genotypes to produce callus in polyethylene glycol (PEG)-supplemented medium

Materials and Methods
The present experiments were conducted at the Department of Plant Biology, Mendel University in Brno, Czech Republic.

Plant Material and Genetic Diversity
The plant material consisted of six Kurdish local genotypes of rice (Oryza sativa L.). Kernels were provided by the College of Agricultural Engineering Sciences at the University of Sulaimani, Kurdistan Region of Iraq (Table 1). These genotypes are the most cultivated cultivars in Kurdistan. To determine genetic diversity, rice kernels were germinated in aseptic conditions. The kernels were placed on moist filter paper with distilled water in Petri dishes and incubated at room temperature under a 16 h light/8 h dark cycle in an incubator. Genomic DNA was isolated from 90 mg of young seedlings (10 days) using the DNeasy Plant Mini Kit isolation kit (Qiagen, Hilden, Germany). PCR reaction mixture, electrophoretic separation, and visualization were performed as described in [18,19] with some modifications. The amplification reaction was 1× PCR, 1.80 mM MgCl 2 , 0.40 mM dNTP, 7.50 µM of each primer, 1.00 U Taq polymerase, and 100.00 ng template DNA. The 12 rice SSR markers tested were RM13, RM16, RM228, RM241, RM287, RM309, RM400, RM418, RM443, RM526, RM1079, and RM23818 [20]. Amplifications were achieved in a Biometra gradient thermocycler with the following cycling sequence: Initial denaturation at 94 • C for 6 min, followed by 37 cycles of 1 min at 94 • C, 1 min at 55 • C and 2 min at 72 • C, with a final extension for 8 min at 72 • C. PCR products were mixed with 1/5 volume of loading buffer and separated on a 2.50% (w/v) agarose gel in 1× TBE at 80 V for 2 h. The gels were then stained in a 0.60 µg/mL ethidium bromide bath and the DNA fragments were visualized under UV light.

Callus Induction
The basic medium used in all experiments was composed of the Murashige and Skoog medium (including vitamins). After adjusting the pH to 5.8, the medium was autoclaved at 121 • C for 20 min, then dispensed in 100 × 15 mm magenta boxes. The cultures were maintained in 16 h light/8 h dark at 25 ± 2 • C [21]. Rice kernels were dehusked manually; for each treatment, 10 rice kernels with 3 replicates were used. The kernels were surface sterilized with 70% ethanol for 1 min followed by shaking for 30 min on a gyratory shaker at 200 rpm in 2.60% (w/v) sodium hypochlorite. Then, the kernels were rinsed 4 to 6 times with sterile distilled water. The callus induction medium was supplemented with 2.50 mg/L 2, 4-D, and 1 mg/L kinetin. PEG 6000 was added to the callus induction medium at 0.00% (T0.00), 0.50% (T0.50), 1.00% (T1.00), and 1.50% (T1.50) concentrations. Medium without PEG served as a control. After 30 days, the percentage of the callus induction (CI), callus fresh weight (CFW), and callus dry weight (CDW) were calculated.

Measurement of Ascorbate Peroxidase Activity (APX)
The activity of APX was assayed as the rate of ascorbate oxidation in the presence of H 2 O 2 [23]. The reaction mixture comprised 1.75 mM ascorbate, 0.70 mM H 2 O 2 , 0.10 M potassium phosphate buffer (pH 7.0), and enzyme extract. The decrease in absorption at 290 nm was monitored for 10 min at 25 • C and the amount of oxidized ascorbate was calculated using a molar extinction coefficient of H 2 O 2 = 2800 L·mol −1 cm −1 ). Enzyme activity was expressed in nkat/mg of FW.

Measurement of Catalase Activity (CAT)
CAT activity was assessed as the ascorbate oxidation rate in the presence of H 2 O 2 [24]. The reaction mixture included 60 mM H 2 O 2 , 0.10 M potassium phosphate buffer (pH 7.0), and enzyme extract. The decrease in absorbance of hydrogen peroxide at λ = 240 nm was monitored for 5 min at 25 • C. For calculations, the molar extinction coefficient of hydrogen peroxide = 43.6 L·mol −1 ·cm −1 and correction for path length were used. Enzyme activity was described in nkat/mg of FW.

Proline Content Assay
The amino acid proline was extracted from 50 mg of fresh weight samples using cold extraction in 40% ethanol at 4 • C overnight. Then, the samples were centrifuged at 14,000× g for 5 min. The total proline content was determined spectrophotometrically by the acid ninhydrin method according to [25].

Inorganic Element Content Analyses
Dried samples were digested in a diffused microwave system (MLS 1200 Mega; Milestone S.r.L., Sorisole, Italy). The samples were weighed and placed in polytetrafluoroethylene vessels and 2 mL of HNO 3 (67%, Analpure) and 1 mL of H 2 O 2 (30%, analytical grade) were added. The power-controlled digestion program was applied: Step 1: 250 W, 2 min; Step 2: 0 W, 2 min; Step 3: 400 W, 5 min; Step 4: 0 W, 2 min; Step 5: 500 W, 2 min; Step 6: 0 W, 2 min; and Step 7: 600 W, 6 min. After the digestion, each solution was diluted to 15 mL with ultrapure water (18.2 MW·cm, Direct-Q; Millipore, Molsheim, France) and stored at −20 • C before ICP-MS analysis. The blank samples were prepared under the same working conditions as with the same reagents. The experiments were carried out using an ICP-MS spectrometer (Agilent 7700x; Agilent Technologies, Tokyo, Japan) based on a quadrupole mass analyzer and octapole reaction system (ORS 3). A collision cell in He-mode was used for the elimination of possible polyatomic interference. The instrument was set up by using the Tuning solution (Agilent Technologies, Santa Clara, USA). Isotopes 23 Na and 24 Mg were measured in gas mode, whereas isotopes 31P, 34S, 39K, and 44Ca, were measured in He-mode. As internal standards were used for these elements: 45Sc, 89Y, and 115In (INT-MIX, Analytika Ltd., Prague, Czech Republic). Each plant sample was measured in six replicates. The calibration solutions were provided with the suitable dilution of the single element certified reference materials with 1.000 ± 0.002 g/L for each element (Analytika Ltd., Prague, Czech Republic) with ultrapure water (18.2 MW·cm, Direct-Q; Millipore, Molsheim, France).

Statistical Analyses
For each SSR marker, the following parameters were evaluated: Polymorphic information content (PIC), diversity index (DI), and identity probability (PI) by POPGENE software. One-way ANOVA-CRD and Duncan's new multiple range tests were used to determine significant differences (p ≤ 0.05) among rice genotypes and relationships among different variables using XLSTAT software version 2019.2.2. Correlation analysis was performed by Displayr software.
In addition, the ranking method was used to identify the best genotypes as per the method proposed by [26], using various measured traits. Using this method, the stress tolerance index (STI) and the average number of ranks (ASRs) were used as the criterion for choosing the best genotypes for all characteristics. In this method, each trait's best performance recorded the lowest rank; thus, the best genotypes were identified with the highest STI and lowest ASR values [27].

Genetic Diversity among Rice Genotypes
The first step of the current research was DNA fingerprinting as seen in Table 2. The results showed that 11 SSR markers produced 3.18 polymorphic alleles per locus across the 6 samples, and the highest number alleles (5.00) were detected in SSR RM443. The PIC varied from 0.38 (RM241, RM418, and RM309) to 0.84 (RM287), the DI ranged from 0.50 to 0.84, and the PI from 0.02 (RM287) to 0.38 (RM241, RM418, and RM309), illustrating the broad genetic variability of the local rice accessions. The RM526 marker reflected the existence of uniform genotypes. The dissimilarity matrix ranged from 0.33 to 0.88 (Table 3).

PEG Stress Tolerance Based on Callus Growth Traits
The overarching goal of this experiment was to investigate the drought tolerance of six rice genotypes under in vitro callus initiation and to test their reactions to the various amounts of PEG by estimating the characteristics of CI, CFW, and CDW. The six genotypes responded markedly to different PEG concentrations. Figure 1 illustrates the box plots of six callus growth traits and comparative analyses of variations between the control group and stress groups (T0.50, T1.0, and T1.50) across all genotypes. CI, CFW, CDW, CL, and CW traits showed significant decreases compared to the control treatment and these characteristics gradually decreased from minimal drought stress (T0.50) to severe drought stress (T1.50), while CWT showed a significant increase compared to the control group. As shown in Table 4, significant variations were illustrated among all genotypes for all callus growth parameters under control and stress conditions. In the control condition (T0.00), the data ranged from 66.67% (Red Bazyan) to 100% (White Bazyan), 1 (Red Bazyan) to 1.40 g (White Bazyan), and 0.44 (Red Bazyan) to 0.76 g (White Bazyan) for CI, CFW, and CDW, respectively. At the T0.50 condition, a highly significant difference in callus growth parameters was displayed among the tested genotypes. The highest values of CI, CFW, and CDW were found in White Bazyan (100%), Choman (1.18 g), and White Bazyan (0.54 g), respectively. For the T1.00 treatment, the maximum values were recorded by Choman, Shawre, and White Bazyan for CI; Choman for CFW; and Shawre for CDW. At a high concentration of PEG (T1.50), the responses of six genotypes varied between 53.33% and 86.67% for CI, 0.30 and 0.91 g for CFW, and 0.16 and 0.38 g for CDW. High CI, CFW, and CL were observed in the Choman genotype at a high level of PEG. As indicated by the results, the minimum values of CI, CFW, and CDW were revealed by Red Bazyan. These findings indicate that the rice genotypes react differently to drought and the responses of genotypes depend on PEG concentrations. This suggests the different genotype potentials for callus growth parameters. In addition, as the amount of PEG was increased in the medium, there was a decline in CFW and CDW. Concerning the callus cell dimension parameters ( Figure 2 and Table 5), a remarkable and important divergence was exhibited among the six rice genotypes depending on PEG concentrations. Maximum values of CL, CW, and CWT in the control condition were observed by Shawre (47.80 µm), Shware (33.23 µm), and Red Bazyan (2.37 µm), respectively. At the low PEG level (T0.50), the reaction of the six genotypes ranged from 22.03 (Kalar and Shawre) to 33.5 µm (Choman) for CL, 10.73 (Shawre) to 19.77 µm (Choman) for CW, and 1.93 (Gwll Swr) to 2.43 µm (Choman) for CWT. The Choman genotype with 47.80, 16.20, and 3.33 µm was noticed to have maximal values of CL, CW, and CWT, respectively, at the T1.50 concentration. Further, the ranking method was conducted based on the callus growth parameters to identify the best genotypes according to the method proposed by [26], using different evaluated traits. Based on this approach, the average sum of ranks (ASRs) was used as an indicator for selecting the best genotypes for growth traits [27]. The order of genotypes from PEG resistant > susceptible was White Bazyan > Choman > Shawre > Gwll Swr > Red Bazyan > Kalar for the T0.50 condition; Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr > Kalar under the T1.0 treatment; and Choman > Shawre > Kalar > White Bazyan > Red Bazyan > Gwll Swr under the T1.50 concentration. For the overall stress conditions, the genotypes' resistance/susceptibility rating according to their callus growth parameters was as follows: PEG resistant > susceptible, Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr = Kalar (Table 6).

PEG Stress Tolerance Based on Proline Content and Antioxidant Enzyme Activity
The findings of our analysis revealed that there were major variations between the genotypes under non-stress and stress conditions for the proline content and antioxidant enzyme activities (APX and CAT) ( Table 7). Notable differences between these characteristics were established between the four groups ( Figure 3) across the six genotypes. Larger distribution ranges were seen in the proline content (PC) under all conditions. The smallest distribution ranges between unstressed and stressed groups were revealed in APX and CAT under the T0.50 condition. Under the optimum condition (T0.00), Gwll Swr, Red Bazyan, and White Bazyan registered the best values in PC (0.31 µmol/g FW), APX (0.81 nkat/mg FW), and CAT (10.49 nkat/mg FW) activities, respectively. At T0.50, the ranges of PC, APX, and CAT were from 0.21 to 0.46 µmol/g FW, 0.75 to 1.11 nkat/mg FW, and 16.55 to 26.98 nkat/mg FW, respectively. Choman had the largest output values of APX and CAT actions under the T1.00 and T1.50 stress treatments and Shawre showed the maximum PC value. For the overall stress conditions, the genotypes' resistance/susceptibility rating according to the PC, APX, and CAT characteristics was as follows: Choman > Shawre > White Bazyan > Gwll Swr > Red Bazyan > Kalar (Table 8). In addition, the degree of metabolic alterations in response to stress was associated with the reported sensitivity/tolerance phenotype.    Figure 4 demonstrates the box charts of the inorganic element parameters and significant dissimilarities between the control group and stress groups (T0.50, T1.0, and T1.50). The Na and Mg contents revealed significant decreases compared to the control treatment and these characteristics progressively diminished from slight stress (T0.50) to high stress (T1.50). Further, no significant variation in the S content was observed between the four groups. The distribution ranges were largest in Na content. Inorganic elements exhibited substantial variations in all rice genotypes under control and stress conditions (Table 9). Under the control condition, the Red Bazyan genotype obtained the greatest amounts of Mg (3066.46 µg/g), P (13125.19 µg/g), S (5473.38 µg/g), and K (49,711.49 µg/g). The largest amount of Na (382.13 µg/g) and Ca (6014.87 µg/g) was documented in Shawre. At low drought stress (T0.50), Red Bazyan expressed the highest Na (368.89 µg/g), Mg (3466.10 µg/g), P (12,101.34 µg/g), K (45,255.60 µg/g), and Ca (6507.31 µg/g). Under moderate stress (T1.00), the maximum quantity of Na (210.28 µg/g), Mg (2596.67 µg/g), P (14,121.74 µg/g), K (48,698.00 µg/g), and Ca (5083.59 µg/g) was recorded in Red Bazyan. At high PEG stress (T1.50), Red Bazyan contained the highest contents of Mg (2256.66 µg/g), P (12,135.20 µg/g), and K (37,482.84 µg/g), while the Shawre genotype had the lowest amount of Na (86.48 µg/g), P (5880.94 µg/g), S (1764.29 µg/g), Mg (1180.56 µg/g), and Ca (1670.19 µg/g).

Relationship Analysis Between Phenotypic and Biochemical Traits under Optimum and Stress Conditions
Different methods were used to classify the genotypes; the most suitable was multivariate analysis. In addition, data mining is a useful method for large dataset collection, discovery, and modelling to identify novel patterns to explain more challenging and decisive results. Multivariate methods of analysis, such as principal component analysis (PCA), have been used for classification. The data obtained from the normal and stress treatments were used to create the PCA plot. In the normal condition, the two components PC1 and PC2 reported 73.75% of the initial variation. The first and second contributions were 49.25 and 24.49%, respectively ( Figure 5A). Concerning the distribution of genotypes on the PCA plot, genotypes located far from the center of the plot in the positive patterns of distinct traits showed the best performance, while the genotypes at the center of the plot showed the poor results in the negative orientation of traits. As seen in Figure 5A, the first primary component (PC1) was positively influenced by traits CWT and CAT, while CI, CFW, and CDW were negatively linked to the first component. The second main component (PC2) was negatively associated with the APX trait. As seen in Figure 5B, the first primary component described roughly 42.13% of the variation and was positively influenced by CI, CFW, CDW, and CAT. The second main component clarified 39.63% of the variance and was positively linked with CW and negatively associated with APX and CWT. Under the T1.00 treatment, the two components PC1 and PC2 described 78.13% of the total trait difference ( Figure 5C). APX, CAT, CI, CFW, and CDW were correlated positively with the first component. Under the high-stress condition, a total variation of 86.40% was explained by PC1 and PC2. CI, CFW, CDW, CWT, PC, CAT, and APX were associated positively with the primary component ( Figure 5D). As shown in Figure 5D, Choman and Shawre correlated positively with the CI, CFW, CDW, CWT, PC, CAT, and APX traits. For determining the significant correlation among different characters, a simple Pearson correlation (r) analysis of nine characteristics under unstressed and stressed conditions was conducted ( Figure 6). Under the optimum condition, six significant r values were found between the nine traits. CI displayed a strong significant and positive relationship with CFW (r = 0.82*, p-value = 0.04) and CDW (r = 0.89*, p-value = 0.02), and showed a strong negative association with CWT (r = −0.84*, p-value = 0.04). CFW highly and significantly correlated with CDW (r = 0.97**, p-value = 0.001). Significant and positive r values were found between CL and CW (r = 0.87*, p-value = 0.02), and between CWT and CAT (r = 0.88*, p-value = 0.02). Under T0.50 stress, CFW was highly and significantly correlated with CDW (r = 0.94**, p-value = 0.005). CI correlated positively and significantly with CDW (r = 0.84*, p-value = 0.04) and CAT (r = 0.83*, p-value = 0.04). Further, CAT had strong positive and significant correlations with CI (r = 0.89*, p-value = 0.02) and APX (r = 0.85*, p-value = 0.03). Notably, CFW showed strong positive correlations with CDW (r = 0.86*, p-value = 0.03) under the T1.0 stress condition. In the T1.50 stress treatment, seven positive and significant relationships were registered. The correlation values demonstrated highly positive and significant correlations between CI and CAT (r = 0.96**, p-value = 0.003), between CFW and CDW (r = 0.92**, p-value = 0.001), and between CDW and PC (r = 0.92**, p-value = 0.001). APX indicated a positive and significant correlation with CI (r = 0.89*, p-value = 0.018) and CL (r = 0.83*, p-value = 0.04). These findings show that a positive and significant association between CFW and CDW was observed under stressful and optimized conditions. CI was also positively and significantly associated with CAT in all stressed treatments.

Discussion
The morphological and physiological variations between genotypes are relatively unexplored resources that can not only provide crucial data on the capacity and performance of various crops under various climatic conditions but are also an invaluable genetic resource that could be used to improve yields [28]. Awareness of this natural diversity should encourage the use of modern (with desirable traits) genotypes to improve crop yields. The present results showed natural diversity among the analyzed genotypes, indicating differential growth properties in control conditions for the six genotypes.
For genotype screening, an investigation was conducted using 12 SSR markers, of which 11 were polymorphic bands. Similarly, [29] tested 16 rice genotypes with different drought sensitivity with SSR markers and found 60 polymorphic bands. Different rice genotypes of Heilongjiang Province were analyzed by [30] using SSR markers under stress conditions and the authors found, on average, three alleles that are comparable to our results. On the contrary, [18] reported an average of five alleles per locus in rice genotypes from Bangladesh and [31] reported nine alleles per locus in Ecuadorian rice genotypes. This difference was probably due to the genetic makeup, higher number of genotypes, and types of SSR markers analyzed. The mean of the PIC value in this study was higher than the PIC value (0.33) reported by [32] but lower than those reported by [29,31], who observed an average of 0.62. The genetic distance between genotypes used in our study ranged from 0.33 to 0.88, which indicated high genetic divergence among the rice genotypes. Similarly, 314 rice genotypes from northern Laos were analyzed by SSR and a high distance was found [33]. Based on DNA analyses, it was proven that the six genotypes differ genetically each from other, and two SSR markers (RM443 and RM287) can be used for the identification of six rice genotypes due to their high PIC value.
The data of the drought-tolerant response confirmed that there was a significant decrease in CI, CFW, CDW, and CL in all genotypes after PEG treatment; these responses were dose dependent. In stress conditions, a substantial decrease in the CIP, CFW, CDW, and CL parameters was observed in callus obtained from all of the genotypes, while an increase of CWT was displayed. These results followed similar trends to those observed in the callus of rice by [34][35][36]. In terms of results, Choman and Shawre showed similar performances under the non-stressed condition, and grew better than the other genotypes under the stress condition, exhibiting superior tolerance to osmotic stress. On the other hand, Kalar and Gwll Swr appeared to be the most sensitive to PEG stress. Concerning the ranking of genotypes based on phenotypic characterizations, the order of rice genotypes was: PEG resistant > susceptible, Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr = Kalar. Decreased growth of callus is caused by the negative impacts of PEG on the metabolic function of cells, including enzyme, nucleic acid, and protein synthesis, and the stability of the cell membrane. This negative effect of PEG decreases the rates of plant hormones and turgor pressure, which is considered a critical factor in regulating the growth and enlargement of cells [37,38]. In addition, drought stress induces free radical formation by lipid peroxidation and therefore damages the membrane. The stability of the cell membrane is one of the main parameters for cellular responses under drought conditions and the abiotic stress tolerance factor in plants [39]. In the current research, PC, APX, and CAT activities in rice calli treated with different concentrations of PEG were increased in all genotypes. Choman and Shawre had the greatest amount of APX and CAT activities. These increases minimize the production of free radicals and protect the cell membrane from degradation. In our study, in all analyzed genotypes, a significant increase in proline content was recorded in PEG-treated plants. Shawre had the largest PC amount, whereas the minimum mean values of PC were recorded by Kalar and Gwll Swr. In a comparative study of rice varieties cultivated in hydroponic culture, increased proline accumulation was correlated with a higher degree of tolerance against PEG 6000-induced drought stress [40]. In the correlation analysis, CI was also positively and significantly associated with CAT in all stressed conditions. Based on this finding, CI and CAT were considered to be reliable predictors for the ability of these six local rice genotypes to produce callus in PEG-supplemented medium. White Bazyan and Gwll Swr genotypes reported the maximum increase in Na, Mg, K, and Ca contents, while the largest decreases in Na, K, Ca, Mg, S, and P contents were found in the Choman genotype. As can be seen from the results, PEG-tolerant genotypes (Choman and Shawre) contained a smaller amount of most mineral elements than PEG-sensitive genotypes (Kalar and Gwll Swr), suggesting that biochemical traits (enzymatic and non-enzymatic stress markers) are more important for enhancing tolerance in rice genotypes. Based on the findings of callus growth and biochemical parameters under stress treatments, a notable genotype differentiation based on the tolerance reaction was recognized as follows: Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr > Kalar. According to this classification, the tolerance response in the Choman genotype is higher than that of the other genotypes, even though Choman showed the highest values of CI, CFW, CL, CW, CWT, APX, and CAT, and modest values of CDW and PC.

Conclusions
From the above discussion, it can be concluded that a significant genetic distance among the six rice genotypes for drought tolerance exists. The drought response in Kurdish rice genotypes varied based on the PEG amount. Drought stress had a negative impact on callus growth and morphology. PEG 6000 treatment-induced moisture stress assisted in the screening and identification of drought-tolerant genotypes. Choman showed better performance in terms of CI, CFW, CDW, CL, CW, CWT, and antioxidant enzyme activity, and a moderate level of PC. Based on the reporting of callus growth and biochemical parameters, the ranking was as follows: PEG resistant > susceptible, Choman > Shawre > White Bazyan > Red Bazyan > Gwll Swr > Kalar. In the short term, the use of callus traits is a cost-effective approach to the quick screening of resistant or sensitive rice genotypes. The study also concluded that the correlation between CI and CAT genotypes can be a reliable predictor of drought tolerance in rice genotypes. In the short term, the use of callus characters is useful for rapid screening of resistant or sensitive rice genotypes, and the reliable indicator of drought tolerance is not supported by the experimental work, as there is no evidence of a correlation with the drought tolerance of rice plants. As a future project, Choman and Shawre should be tested in field conditions to find a correlation between the responses of both genotypes under in vitro and field conditions.