假阳性悖论
分类器(UML)
计算机科学
人工智能
模式识别(心理学)
微阵列分析技术
微阵列
基因表达谱
假阳性和假阴性
数据挖掘
基因
生物
基因表达
遗传学
作者
Sun‐Yuan Hsieh,Yu-Chun Chou
标识
DOI:10.1109/tcbb.2015.2474389
摘要
Profiling cancer molecules has several advantages; however, using microarray technology in routine clinical diagnostics is challenging for physicians. The classification of microarray data has two main limitations: 1) the data set is unreliable for building classifiers; and 2) the classifiers exhibit poor performance. Current microarray classification algorithms typically yield a high rate of false-positives cases, which is unacceptable in diagnostic applications. Numerous algorithms have been developed to detect false-positive cases; however, they require a considerable computation time. To address this problem, this study enhanced a previously proposed gene expression graph (GEG)-based classifier to shorten the computation time. The modified classifier filters genes by using an edge weight to determine their significance, thereby facilitating accurate comparison and classification. This study experimentally compared the proposed classifier with a GEG-based classifier by using real data and benchmark tests. The results show that the proposed classifier is faster at detecting false-positives.
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