Machine learning model identifies genetic predictors of cisplatin-induced ototoxicity in CERS6 and TLR4

IF 7 2区 医学 Q1 BIOLOGY Computers in biology and medicine Pub Date : 2024-11-01 DOI:10.1016/j.compbiomed.2024.109324
Ali Arab , Bahareh Kashani , Miguel Cordova-Delgado , Erika N. Scott , Kaveh Alemi , Jessica Trueman , Gabriella Groeneweg , Wan-Chun Chang , Catrina M. Loucks , Colin J.D. Ross , Bruce C. Carleton , Martin Ester
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Abstract

Background

Cisplatin-induced ototoxicity remains a significant concern in pediatric cancer treatment due to its permanent impact on quality of life. Previously, genetic association analyses have been performed to detect genetic variants associated with this adverse reaction.

Methods

In this study, a combination of interpretable neural networks and Generative Adversarial Networks (GANs) was employed to identify genetic markers associated with cisplatin-induced ototoxicity. The applied method, BRI-Net, incorporates biological domain knowledge to define the network structure and employs adversarial training to learn an unbiased representation of the data, which is robust to known confounders. Leveraging genomic data from a cohort of 362 cisplatin-treated pediatric cancer patients recruited by the CPNDS (Canadian Pharmacogenomics Network for Drug Safety), this model revealed two statistically significant single nucleotide polymorphisms to be associated with cisplatin-induced ototoxicity.

Results

Two markers within the CERS6 (rs13022792, p-value: 3 × 10−4) and TLR4 (rs10759932, p-value: 7 × 10−4) genes were associated with this cisplatin-induced adverse reaction. CERS6, a ceramide synthase, contributes to elevated ceramide levels, a known initiator of apoptotic signals in mouse models of inner ear hair cells. TLR4, a pattern-recognition protein, initiates inflammation in response to cisplatin, and reduced TLR4 expression has been shown in murine hair cells to confer protection from ototoxicity.

Conclusion

Overall, these findings provide a foundation for understanding the genetic landscape of cisplatin-induced ototoxicity, with implications for improving patient care and treatment outcomes.
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机器学习模型确定了 CERS6 和 TLR4 中顺铂诱导耳毒性的遗传预测因子。
背景:顺铂诱发的耳毒性对生活质量有永久性影响,因此仍是儿科癌症治疗中的一个重要问题。以前曾进行过遗传关联分析,以检测与这种不良反应相关的遗传变异:本研究结合可解释神经网络和生成对抗网络(GANs)来识别与顺铂诱导的耳毒性相关的遗传标记。应用的方法 BRI-Net 结合了生物领域的知识来定义网络结构,并采用对抗训练来学习无偏的数据表示,对已知混杂因素具有鲁棒性。利用 CPNDS(加拿大药物基因组学药物安全网络)招募的 362 名顺铂治疗的儿科癌症患者的基因组数据,该模型揭示了两个具有统计学意义的单核苷酸多态性与顺铂诱导的耳毒性相关:结果:CERS6(rs13022792,p 值:3×10-4)和 TLR4(rs10759932,p 值:7×10-4)基因中的两个标记与顺铂诱发的这种不良反应有关。CERS6 是一种神经酰胺合成酶,可导致神经酰胺水平升高,而神经酰胺是小鼠内耳毛细胞模型中凋亡信号的已知启动因子。TLR4是一种模式识别蛋白,会在顺铂作用下引发炎症反应,小鼠毛细胞中TLR4表达的减少已被证明可使其免受耳毒性的影响:总之,这些研究结果为了解顺铂诱发耳毒性的遗传学特征奠定了基础,对改善患者护理和治疗效果具有重要意义。
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来源期刊
Computers in biology and medicine
Computers in biology and medicine 工程技术-工程:生物医学
CiteScore
11.70
自引率
10.40%
发文量
1086
审稿时长
74 days
期刊介绍: Computers in Biology and Medicine is an international forum for sharing groundbreaking advancements in the use of computers in bioscience and medicine. This journal serves as a medium for communicating essential research, instruction, ideas, and information regarding the rapidly evolving field of computer applications in these domains. By encouraging the exchange of knowledge, we aim to facilitate progress and innovation in the utilization of computers in biology and medicine.
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