膀胱癌基因表达谱的人工智能技术

M. Abbod, J. Catto, D. Linkens, P. Wild, A. Herr, C. Wissmann, C. Pilarsky, A. Hartmann, F. Hamdy
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引用次数: 6

摘要

本研究的目的是开发一种基于基因表达特征将癌症分类到特定诊断类别的方法,使用人工智能(AI)技术,该技术提供比标准传统统计方法更好的预测。比较了神经模糊模型(NFM)、人工神经网络(ANN)和传统逻辑回归(LR)方法对膀胱癌行为的预测精度。非侵袭性和侵袭性膀胱癌的基因表达谱用于确定膀胱癌的潜在治疗或筛查靶点,并确定复发性乳头状膀胱癌(pTa)肿瘤进展相关的遗传变化。对于这三种方法,都建立了模型来预测肿瘤进展、分期和分级的存在和时间。AI方法预测进程的准确率高达100%。这优于逻辑回归
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Artificial Intelligence Technique for Gene Expression Profiling of Urinary Bladder Cancer
The purpose of this study is to develop a method of classifying cancers to specific diagnostic categories based on their gene expression signatures using artificial intelligence (AI) techniques which provide better predictions than standard traditional statistical methods. The predictive accuracies of neuro-fuzzy modelling (NFM), artificial neural networks (ANN) and traditional logistic regression (LR) methods are compared for the behaviour of bladder cancer. Gene expression profiles of non-invasive and invasive bladder cancer were used to identify potential therapeutic or screening targets in bladder cancer, and to define genetic changes relevant for tumour progression of recurrent papillary bladder cancer (pTa). For all three methods, models were produced to predict the presence and timing of a tumour progression, stage and grade. AI methodology predicted progression with an accuracy ranging up to 100%. This was superior to logistic regression
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