期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
In silico protein function prediction:the rise of machine learning-based approaches
1
作者 Jiaxiao Chen Zhonghui Gu +1 位作者 Luhua Lai Jianfeng Pei 《Medical Review》 2023年第6期487-510,共24页
Proteins function as integral actors in essential life processes,rendering the realm of protein research a fundamental domain that possesses the potential to propel advancements in pharmaceuticals and disease investig... Proteins function as integral actors in essential life processes,rendering the realm of protein research a fundamental domain that possesses the potential to propel advancements in pharmaceuticals and disease investigation.Within the context of protein research,an imperious demand arises to uncover protein functionalities and untangle intricate mechanistic underpinnings.Due to the exorbitant costs and limited throughput inherent in experimental investigations,computational models offer a promising alternative to accelerate protein function annotation.In recent years,protein pre-training models have exhibited noteworthy advancement across multiple prediction tasks.This advancement highlights a notable prospect for effectively tackling the intricate downstream task associated with protein function prediction.In this review,we elucidate the historical evolution and research paradigms of computational methods for predicting protein function.Subsequently,we summarize the progress in protein and molecule representation as well as feature extraction techniques.Furthermore,we assess the performance of machine learning-based algorithms across various objectives in protein function prediction,thereby offering a comprehensive perspective on the progress within this field. 展开更多
关键词 protein function prediction pre-training models protein interaction prediction protein function annotation biological knowledge graph
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部