Cancer prediction using graph-based gene selection and explainable classifier

M. Rostami, Mourad Oussalah
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引用次数: 2

Abstract

Several Artificial Intelligence-based models have been developed for cancer prediction. In spite of the promise of artificial intelligence, there are very few models which bridge the gap between traditional human-centered prediction and the potential future of machine-centered cancer prediction. In this study, an efficient and effective model is developed for gene selection and cancer prediction. Moreover, this study proposes an artificial intelligence decision system to provide physicians with a simple and human-interpretable set of rules for cancer prediction. In contrast to previous deep learning-based cancer prediction models, which are difficult to explain to physicians due to their black-box nature, the proposed prediction model is based on a transparent and explainable decision forest model. The performance of the developed approach is compared to three state-of-the-art cancer prediction including TAGA, HPSO and LL. The reported results on five cancer datasets indicate that the developed model can improve the accuracy of cancer prediction and reduce the execution time.
基于图的基因选择和可解释分类器的癌症预测
一些基于人工智能的癌症预测模型已经被开发出来。尽管人工智能前景光明,但很少有模型能够弥合传统的以人为中心的预测与未来可能以机器为中心的癌症预测之间的差距。本研究建立了一种高效的基因选择和癌症预测模型。此外,本研究提出了一种人工智能决策系统,为医生提供一套简单且人类可解释的癌症预测规则。以往基于深度学习的癌症预测模型由于其黑箱性质而难以向医生解释,与之相反,该预测模型基于透明且可解释的决策森林模型。将所开发方法的性能与包括TAGA、HPSO和LL在内的三种最先进的癌症预测进行了比较。在五个癌症数据集上的报告结果表明,所开发的模型可以提高癌症预测的准确性,减少执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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