Artificial intelligence in ovarian cancer drug resistance advanced 3PM approach: subtype classification and prognostic modeling

IF 6.5 2区 医学 Q1 Medicine Epma Journal Pub Date : 2024-07-13 DOI:10.1007/s13167-024-00374-4
Cong Zhang, Jinxiang Yang, Siyu Chen, Lichang Sun, Kangjie Li, Guichuan Lai, Bin Peng, Xiaoni Zhong, Biao Xie
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引用次数: 0

Abstract

Background

Ovarian cancer patients’ resistance to first-line treatment posed a significant challenge, with approximately 70% experiencing recurrence and developing strong resistance to first-line chemotherapies like paclitaxel.

Objectives

Within the framework of predictive, preventive, and personalized medicine (3PM), this study aimed to use artificial intelligence to find drug resistance characteristics at the single cell, and further construct the classification strategy and deep learning prognostic models based on these resistance traits, which can better facilitate and perform 3PM.

Methods

This study employed “Beyondcell,” an algorithm capable of predicting cellular drug responses, to calculate the similarity between the expression patterns of 21,937 cells from ovarian cancer samples and the signatures of 5201 drugs to identify drug-resistance cells. Drug resistance features were used to perform 10 multi-omics clustering on the TCGA training set to identify patient subgroups with differential drug responses. Concurrently, a deep learning prognostic model with KAN architecture which had a flexible activation function to better fit the model was constructed for this training set. The constructed patient subtype classifier and prognostic model were evaluated using three external validation sets from GEO: GSE17260, GSE26712, and GSE51088.

Results

This study identified that endothelial cells are resistant to paclitaxel, doxorubicin, and docetaxel, suggesting their potential as targets for cellular therapy in ovarian cancer patients. Based on drug resistance features, 10 multi-omics clustering identified four patient subtypes with differential responses to four chemotherapy drugs, in which subtype CS2 showed the highest drug sensitivity to all four drugs. The other subtypes also showed enrichment in different biological pathways and immune infiltration, allowing for targeted treatment based on their characteristics. Besides, this study applied the latest KAN architecture in artificial intelligence to replace the MLP structure in the DeepSurv prognostic model, finally demonstrating robust performance on patients’ prognosis prediction.

Conclusions

This study, by classifying patients and constructing prognostic models based on resistance characteristics to first-line drugs, has effectively applied multi-omics data into the realm of 3PM.

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人工智能在卵巢癌耐药性高级 3PM 方法中的应用:亚型分类和预后建模
背景卵巢癌患者对一线治疗的耐药性是一项重大挑战,约70%的卵巢癌患者会出现复发,并对紫杉醇等一线化疗药物产生强烈的耐药性。目的在预测、预防和个性化医疗(3PM)的框架下,本研究旨在利用人工智能发现单细胞的耐药性特征,并根据这些耐药性特征进一步构建分类策略和深度学习预后模型,从而更好地促进和开展3PM。方法本研究采用了能够预测细胞药物反应的算法 "Beyondcell",计算了21937个卵巢癌样本细胞的表达模式与5201种药物特征之间的相似性,从而识别出耐药细胞。利用耐药性特征对 TCGA 训练集进行了 10 次多组学聚类,以确定具有不同药物反应的患者亚群。同时,针对该训练集构建了一个具有 KAN 架构的深度学习预后模型,该模型具有灵活的激活函数,能更好地适应模型。所构建的患者亚型分类器和预后模型使用来自 GEO 的三个外部验证集进行了评估:结果这项研究发现内皮细胞对紫杉醇、多柔比星和多西他赛有耐药性,这表明它们有可能成为卵巢癌患者的细胞治疗靶点。根据耐药性特征,10个多组学聚类分析确定了对四种化疗药物反应不同的四种患者亚型,其中CS2亚型对所有四种药物的药物敏感性最高。其他亚型在不同生物通路和免疫浸润方面也表现出富集性,可根据其特点进行靶向治疗。此外,本研究还应用了人工智能领域最新的 KAN 架构,取代了 DeepSurv 预后模型中的 MLP 结构,最终在患者预后预测方面表现出了强劲的性能。 结论 本研究通过对患者进行分类,并根据一线药物的耐药特征构建预后模型,有效地将多组学数据应用到了 3PM 领域。
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来源期刊
Epma Journal
Epma Journal Medicine-Biochemistry (medical)
CiteScore
11.30
自引率
23.10%
发文量
0
期刊介绍: PMA Journal is a journal of predictive, preventive and personalized medicine (PPPM). The journal provides expert viewpoints and research on medical innovations and advanced healthcare using predictive diagnostics, targeted preventive measures and personalized patient treatments. The journal is indexed by PubMed, Embase and Scopus.
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