癌症遗传学和深度学习在诊断、预后和分类中的应用

M. Sokouti, B. Sokouti
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引用次数: 0

摘要

基因表达数据用于发现基因数据集中有意义的隐藏信息。癌症和其他疾病可根据基因表达谱的差异进行诊断,这些信息可通过基因测序收集。得益于人工智能(AI)的巨大威力,医疗保健已成为深度学习(DL)的重要用户,用于预测癌症疾病和对基因表达进行分类。基因表达微阵列已被证明能有效预测癌症疾病并对基因表达进行分类。基因表达数据集只包含有限的样本,但癌症的特征是多样而复杂的。为了克服维度问题,必须增强基因表达数据集。通过学习和分析输入数据的特征,可以从数据中提取多维阵列特征。需要合成样本来加强信息范围。当基因表达数据用于诊断和分类癌症疾病时,可以使用 DL 策略。
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Cancer genetics and deep learning applications for diagnosis, prognosis, and categorization
Gene expression data are used to discover meaningful hidden information in gene datasets. Cancer and other disorders may be diagnosed based on differences in gene expression profiles, and this information can be gleaned by gene sequencing. Thanks to the tremendous power of artificial intelligence (AI), healthcare has become a significant user of deep learning (DL) for predicting cancer diseases and categorizing gene expression. Gene expression Microarrays have been proved effective in predicting cancer diseases and categorizing gene expression. Gene expression datasets contain only limited samples, but the features of cancer are diverse and complex. To overcome their dimensionality, gene expression datasets must be enhanced. By learning and analyzing features of input data, it is possible to extract features, as multidimensional arrays, from the data. Synthetic samples are needed to strengthen the range of information. DL strategies may be used when gene expression data are used to diagnose and classify cancer diseases.
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