计算机科学
注释
分类器(UML)
图形
Python(编程语言)
源代码
数据挖掘
乳腺癌
人口
人工智能
机器学习
癌症
生物
理论计算机科学
操作系统
社会学
人口学
遗传学
作者
Thin Nguyen,Sam Lee,Thomas P. Quinn,Buu Truong,Xiaomei Li,Truyen Tran,Svetha Venkatesh,Thuc Duy Le
标识
DOI:10.1109/tcbb.2021.3076422
摘要
The classification of clinical samples based on gene expression data is an important part of precision medicine. In this manuscript, we show how transforming gene expression data into a set of personalized (sample-specific) networks can allow us to harness existing graph-based methods to improve classifier performance. Existing approaches to personalized gene networks have the limitation that they depend on other samples in the data and must get re-computed whenever a new sample is introduced. Here, we propose a novel method, called Personalized Annotation-based Networks (PAN), that avoids this limitation by using curated annotation databases to transform gene expression data into a graph. Unlike competing methods, PANs are calculated for each sample independent of the population, making it a more efficient way to obtain single-sample networks. Using three breast cancer datasets as a case study, we show that PAN classifiers not only predict cancer relapse better than gene features alone, but also outperform PPI (protein-protein interactions) and population-level graph-based classifiers. This work demonstrates the practical advantages of graph-based classification for high-dimensional genomic data, while offering a new approach to making sample-specific networks. Supplementary information: PAN and the baselines are implemented in Python. Source code and data are available at https://github.com/thinng/PAN.
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