Deep generative models for peptide design

被引:44
|
作者
Wan, Fangping [1 ,2 ,3 ,4 ,5 ]
Kontogiorgos-Heintz, Daphne [1 ,2 ,3 ,4 ,5 ,6 ]
de la Fuente-Nunez, Cesar [1 ,2 ,3 ,4 ,5 ]
机构
[1] Univ Penn, Inst Translat Med & Therapeut, Perelman Sch Med, Machine Biol Grp,Dept Psychiat,Inst Biomed Informa, Philadelphia, PA 19104 USA
[2] Univ Penn, Inst Translat Med & Therapeut, Perelman Sch Med, Machine Biol Grp,Dept Microbiol,Inst Biomed Inform, Philadelphia, PA 19104 USA
[3] Univ Penn, Sch Engn & Appl Sci, Dept Bioengn, Philadelphia, PA 19104 USA
[4] Univ Penn, Sch Engn & Appl Sci, Dept Chem Biomol Engn, Philadelphia, PA 19104 USA
[5] Univ Penn, Penn Inst Computat Sci, Philadelphia, PA 19104 USA
[6] Univ Penn, Sch Engn & Appl Sci, Dept Comp & Informat Sci, Philadelphia, PA USA
来源
DIGITAL DISCOVERY | 2022年 / 1卷 / 03期
基金
美国国家卫生研究院;
关键词
VARIATIONAL AUTOENCODER; ANTIMICROBIAL PEPTIDES; DRUG DISCOVERY; NEURAL-NETWORK; DATABASE; UNCERTAINTY; PROTEINS; RESOURCE; DNA;
D O I
10.1039/d1dd00024a
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Computers can already be programmed for superhuman pattern recognition of images and text. For machines to discover novel molecules, they must first be trained to sort through the many characteristics of molecules and determine which properties should be retained, suppressed, or enhanced to optimize functions of interest. Machines need to be able to understand, read, write, and eventually create new molecules. Today, this creative process relies on deep generative models, which have gained popularity since powerful deep neural networks were introduced to generative model frameworks. In recent years, they have demonstrated excellent ability to model complex distribution of real-word data (e.g., images, audio, text, molecules, and biological sequences). Deep generative models can generate data beyond those provided in training samples, thus yielding an efficient and rapid tool for exploring the massive search space of high-dimensional data such as DNA/protein sequences and facilitating the design of biomolecules with desired functions. Here, we review the emerging field of deep generative models applied to peptide science. In particular, we discuss several popular deep generative model frameworks as well as their applications to generate peptides with various kinds of properties (e.g., antimicrobial, anticancer, cell penetration, etc). We conclude our review with a discussion of current limitations and future perspectives in this emerging field. We present a review of deep generative models and their applications in peptide design.
引用
收藏
页码:195 / 208
页数:14
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