Sanavia Tiziana, Birolo Giovanni, Montanucci Ludovica, Turina Paola, Capriotti Emidio, Fariselli Piero
Department of Medical Sciences, University of Torino, Via Santena 19, 10126 Torino, Italy.
Department of Comparative Biomedicine and Food Science (BCA), University of Padova, Viale dell'Università 16, 35020 Legnaro, Italy.
Comput Struct Biotechnol J. 2020 Jul 24;18:1968-1979. doi: 10.1016/j.csbj.2020.07.011. eCollection 2020.
Protein stability predictions are becoming essential in medicine to develop novel immunotherapeutic agents and for drug discovery. Despite the large number of computational approaches for predicting the protein stability upon mutation, there are still critical unsolved problems: 1) the limited number of thermodynamic measurements for proteins provided by current databases; 2) the large intrinsic variability of ΔΔG values due to different experimental conditions; 3) biases in the development of predictive methods caused by ignoring the anti-symmetry of ΔΔG values between mutant and native protein forms; 4) over-optimistic prediction performance, due to sequence similarity between proteins used in training and test datasets. Here, we review these issues, highlighting new challenges required to improve current tools and to achieve more reliable predictions. In addition, we provide a perspective of how these methods will be beneficial for designing novel precision medicine approaches for several genetic disorders caused by mutations, such as cancer and neurodegenerative diseases.
蛋白质稳定性预测在医学领域对于开发新型免疫治疗药物和药物发现正变得至关重要。尽管有大量用于预测突变后蛋白质稳定性的计算方法,但仍存在一些关键的未解决问题:1)当前数据库提供的蛋白质热力学测量数量有限;2)由于不同实验条件导致的ΔΔG值存在较大内在变异性;3)由于忽略突变体和天然蛋白质形式之间ΔΔG值的反对称性,预测方法开发中存在偏差;4)由于训练和测试数据集中使用的蛋白质之间的序列相似性,预测性能过于乐观。在此,我们回顾这些问题,强调改进当前工具和实现更可靠预测所需的新挑战。此外,我们还展望了这些方法如何有助于设计针对由突变引起的几种遗传疾病(如癌症和神经退行性疾病)的新型精准医学方法。