Developing and validating a drug recommendation system based on tumor microenvironment and drug fingerprint.

IF 4.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2025-01-08 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1444127
Yan Wang, Xiaoye Jin, Rui Qiu, Bo Ma, Sheng Zhang, Xuyang Song, Jinxi He
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Abstract

Introduction: Tumor heterogeneity significantly complicates the selection of effective cancer treatments, as patient responses to drugs can vary widely. Personalized cancer therapy has emerged as a promising strategy to enhance treatment effectiveness and precision. This study aimed to develop a personalized drug recommendation model leveraging genomic profiles to optimize therapeutic outcomes.

Methods: A content-based filtering algorithm was implemented to predict drug sensitivity. Patient features were characterized by the tumor microenvironment (TME), and drug features were represented by drug fingerprints. The model was trained and validated using the Genomics of Drug Sensitivity in Cancer (GDSC) database, followed by independent validation with the Cancer Cell Line Encyclopedia (CCLE) dataset. Clinical application was assessed using The Cancer Genome Atlas (TCGA) dataset, with Best Overall Response (BOR) serving as the clinical efficacy measure. Two multilayer perceptron (MLP) models were built to predict IC50 values for 542 tumor cell lines across 18 drugs.

Results: The model exhibited high predictive accuracy, with correlation coefficients (R) of 0.914 in the training set and 0.902 in the test set. Predictions for cytotoxic drugs, including Docetaxel (R = 0.72) and Cisplatin (R = 0.71), were particularly robust, whereas predictions for targeted therapies were less accurate (R < 0.3). Validation with CCLE (MFI as the endpoint) showed strong correlations (R = 0.67). Application to TCGA data successfully predicted clinical outcomes, including a significant association with 6-month progression-free survival (PFS, P = 0.007, AUC = 0.793).

Discussion: The model demonstrates strong performance across preclinical datasets, showing its potential for real-world application in personalized cancer therapy. By bridging preclinical IC50 and clinical BOR endpoints, this approach provides a promising tool for optimizing patient-specific treatments.

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基于肿瘤微环境和药物指纹图谱的药物推荐系统的开发与验证。
导读:肿瘤的异质性极大地复杂化了有效癌症治疗的选择,因为患者对药物的反应可能差异很大。个性化癌症治疗已成为提高治疗效果和准确性的一种有前景的策略。本研究旨在开发一种利用基因组图谱优化治疗结果的个性化药物推荐模型。方法:采用基于内容的筛选算法预测药物敏感性。采用肿瘤微环境(tumor microenvironment, TME)表征患者特征,采用药物指纹图谱表征药物特征。该模型使用癌症药物敏感性基因组学(GDSC)数据库进行训练和验证,然后使用Cancer Cell Line Encyclopedia (CCLE)数据集进行独立验证。临床应用使用癌症基因组图谱(TCGA)数据集进行评估,以最佳总体反应(BOR)作为临床疗效指标。建立了两个多层感知器(MLP)模型来预测18种药物中542种肿瘤细胞系的IC50值。结果:该模型具有较高的预测准确率,训练集的相关系数(R)为0.914,测试集的相关系数(R)为0.902。对细胞毒性药物,包括多西紫杉醇(R = 0.72)和顺铂(R = 0.71)的预测尤其可靠,而对靶向治疗的预测则不太准确(R < 0.3)。以CCLE (MFI为终点)验证显示强相关性(R = 0.67)。应用TCGA数据成功预测了临床结果,包括与6个月无进展生存期(PFS, P = 0.007, AUC = 0.793)的显著关联。讨论:该模型在临床前数据集中表现出强大的性能,显示了其在个性化癌症治疗中的实际应用潜力。通过连接临床前IC50和临床BOR终点,该方法为优化患者特异性治疗提供了一个很有前途的工具。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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