深度学习
人工智能
计算机科学
变压器
机器学习
蛋白质结构预测
人气
计算生物学
数据科学
蛋白质结构
生物
工程类
社会心理学
电气工程
生物化学
电压
心理学
作者
Abel Chandra,Laura Tünnermann,Tommy Löfstedt,R. Grätz
出处
期刊:eLife
[eLife Sciences Publications Ltd]
日期:2023-01-18
卷期号:12
被引量:58
摘要
Recent developments in deep learning, coupled with an increasing number of sequenced proteins, have led to a breakthrough in life science applications, in particular in protein property prediction. There is hope that deep learning can close the gap between the number of sequenced proteins and proteins with known properties based on lab experiments. Language models from the field of natural language processing have gained popularity for protein property predictions and have led to a new computational revolution in biology, where old prediction results are being improved regularly. Such models can learn useful multipurpose representations of proteins from large open repositories of protein sequences and can be used, for instance, to predict protein properties. The field of natural language processing is growing quickly because of developments in a class of models based on a particular model—the Transformer model. We review recent developments and the use of large-scale Transformer models in applications for predicting protein characteristics and how such models can be used to predict, for example, post-translational modifications. We review shortcomings of other deep learning models and explain how the Transformer models have quickly proven to be a very promising way to unravel information hidden in the sequences of amino acids.
科研通智能强力驱动
Strongly Powered by AbleSci AI