Department of Horticultural Science, College of Agriculture, Shiraz University, Shiraz, 7144113131, Iran.
Department of Horticultural Sciences, Agricultural Sciences and Natural Resources University of Khuzestan, Mollasani, 6341773637, Iran.
BMC Biotechnol. 2023 Aug 1;23(1):27. doi: 10.1186/s12896-023-00796-4.
Optimization of indirect shoot regeneration protocols is one of the key prerequisites for the development of Agrobacterium-mediated genetic transformation and/or genome editing in Passiflora caerulea. Comprehensive knowledge of indirect shoot regeneration and optimized protocol can be obtained by the application of a combination of machine learning (ML) and optimization algorithms.
In the present investigation, the indirect shoot regeneration responses (i.e., de novo shoot regeneration rate, the number of de novo shoots, and length of de novo shoots) of P. caerulea were predicted based on different types and concentrations of PGRs (i.e., TDZ, BAP, PUT, KIN, and IBA) as well as callus types (i.e., callus derived from different explants including leaf, node, and internode) using generalized regression neural network (GRNN) and random forest (RF). Moreover, the developed models were integrated into the genetic algorithm (GA) to optimize the concentration of PGRs and callus types for maximizing indirect shoot regeneration responses. Moreover, sensitivity analysis was conducted to assess the importance of each input variable on the studied parameters.
The results showed that both algorithms (RF and GRNN) had high predictive accuracy (R > 0.86) in both training and testing sets for modeling all studied parameters. Based on the results of optimization process, the highest de novo shoot regeneration rate (100%) would be obtained from callus derived from nodal segments cultured in the medium supplemented with 0.77 mg/L BAP plus 2.41 mg/L PUT plus 0.06 mg/L IBA. The results of the sensitivity analysis showed the explant-dependent impact of exogenous application of PGRs on indirect de novo shoot regeneration.
A combination of ML (GRNN and RF) and GA can display a forward-thinking aid to optimize and predict in vitro culture systems and consequentially cope with several challenges faced currently in Passiflora tissue culture.
优化间接芽再生方案是在蓝靛果忍冬中进行农杆菌介导的遗传转化和/或基因组编辑的关键前提之一。通过应用机器学习 (ML) 和优化算法的组合,可以获得间接芽再生和优化方案的综合知识。
在本研究中,基于不同类型和浓度的植物生长调节剂 (PGRs)(即 TDZ、BAP、PUT、KIN 和 IBA)以及愈伤组织类型(即来自不同外植体的愈伤组织,包括叶、节和节间),使用广义回归神经网络 (GRNN) 和随机森林 (RF) 预测了蓝靛果忍冬的间接芽再生反应(即从头芽再生率、从头芽数量和从头芽长度)。此外,将开发的模型集成到遗传算法 (GA) 中,以优化 PGRs 和愈伤组织类型的浓度,以最大限度地提高间接芽再生反应。此外,进行了敏感性分析,以评估每个输入变量对研究参数的重要性。
结果表明,两种算法(RF 和 GRNN)在训练和测试集内对所有研究参数的建模都具有很高的预测准确性(R>0.86)。根据优化过程的结果,从培养在补充有 0.77mg/L BAP 加 2.41mg/L PUT 加 0.06mg/L IBA 的培养基中的节段来源的愈伤组织中获得的从头芽再生率(100%)最高。敏感性分析的结果表明,外源性施加 PGR 对间接从头芽再生的外植体依赖性影响。
机器学习(GRNN 和 RF)和 GA 的结合可以提供前瞻性辅助,以优化和预测体外培养系统,并因此应对蓝靛果组织培养目前面临的一些挑战。