HiTAIC: hierarchical tumor artificial intelligence classifier traces tissue of origin and tumor type in primary and metastasized tumors using DNA methylation.

NAR Cancer Pub Date : 2023-06-01 DOI:10.1093/narcan/zcad017
Ze Zhang, Yunrui Lu, Soroush Vosoughi, Joshua J Levy, Brock C Christensen, Lucas A Salas
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引用次数: 1

Abstract

Human cancers are heterogenous by their cell composition and origination site. Cancer metastasis generates the conundrum of the unknown origin of migrated tumor cells. Tracing tissue of origin and tumor type in primary and metastasized cancer is vital for clinical significance. DNA methylation alterations play a crucial role in carcinogenesis and mark cell fate differentiation, thus can be used to trace tumor tissue of origin. In this study, we employed a novel tumor-type-specific hierarchical model using genome-scale DNA methylation data to develop a multilayer perceptron model, HiTAIC, to trace tissue of origin and tumor type in 27 cancers from 23 tissue sites in data from 7735 tumors with high resolution, accuracy, and specificity. In tracing primary cancer origin, HiTAIC accuracy was 99% in the test set and 93% in the external validation data set. Metastatic cancers were identified with a 96% accuracy in the external data set. HiTAIC is a user-friendly web-based application through https://sites.dartmouth.edu/salaslabhitaic/. In conclusion, we developed HiTAIC, a DNA methylation-based algorithm, to trace tumor tissue of origin in primary and metastasized cancers. The high accuracy and resolution of tumor tracing using HiTAIC holds promise for clinical assistance in identifying cancer of unknown origin.

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HiTAIC:分级肿瘤人工智能分类器利用DNA甲基化追踪原发性和转移性肿瘤的起源组织和肿瘤类型。
人类癌症的细胞组成和起源部位具有异质性。癌症转移产生了迁移肿瘤细胞起源不明的难题。追踪原发癌和转移癌的起源组织和肿瘤类型对临床意义至关重要。DNA甲基化改变在癌变过程中起着至关重要的作用,标志着细胞命运的分化,因此可以用来追踪肿瘤组织的起源。在这项研究中,我们采用了一种新的肿瘤类型特异性层次模型,利用基因组尺度的DNA甲基化数据开发了一个多层感知器模型HiTAIC,以高分辨率、准确性和特异性追踪7735个肿瘤数据中来自23个组织部位的27种癌症的起源组织和肿瘤类型。在追踪原发性癌症起源时,HiTAIC在测试集的准确度为99%,在外部验证数据集的准确度为93%。在外部数据集中,转移性癌症的识别准确率为96%。HiTAIC是一个用户友好的基于web的应用程序,通过https://sites.dartmouth.edu/salaslabhitaic/。总之,我们开发了一种基于DNA甲基化的算法HiTAIC,用于追踪原发性和转移性癌症的肿瘤组织起源。使用HiTAIC进行肿瘤追踪的高准确性和高分辨率有望为临床鉴定未知来源的癌症提供帮助。
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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