Artificial Intelligence-Driven Prediction Revealed CFTR Associated with Therapy Outcome of Breast Cancer: A Feasibility Study.

IF 2.5 3区 医学 Q3 ONCOLOGY
Oncology Pub Date : 2024-07-18 DOI:10.1159/000540395
Mária Kováčová, Viktor Hlaváč, Renata Koževnikovová, Karel Rauš, Jiří Gatěk, Pavel Souček
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引用次数: 0

Abstract

Introduction: In silico tools capable of predicting the functional consequences of genomic differences between individuals, many of which are AI-driven, have been the most effective over the past two decades for non-synonymous single nucleotide variants (nsSNVs). When appropriately selected for the purpose of the study, a high predictive performance can be expected. In this feasibility study, we investigate the distribution of nsSNVs with an allele frequency below 5%. To classify the putative functional consequence, a tier-based filtration led by AI-driven predictors and scoring system was implemented to the overall decision-making process, resulting in a list of prioritised genes.

Methods: The study has been conducted on breast cancer patients of homogeneous ethnicity. Germline rare variants have been sequenced in genes that influence pharmacokinetic parameters of anticancer drugs or molecular signalling pathways in cancer. After AI-driven functional pathogenicity classification and data mining in pharmacogenomic (PGx) databases, variants were collapsed to the gene level and ranked according to their putative deleterious role.

Results: In breast cancer patients, seven of the twelve genes prioritised based on the predictions were found to be associated with response to oncotherapy, histological grade, and tumour subtype. Most importantly, we showed that the group of patients with at least one rare nsSNVs in cystic fibrosis transmembrane conductance regulator (CFTR) had significantly reduced disease-free (log rank, p = 0.002) and overall survival (log rank, p = 0.006).

Conclusion: AI-driven in silico analysis with PGx data mining provided an effective approach navigating for functional consequences across germline genetic background, which can be easily integrated into the overall decision-making process for future studies. The study revealed a statistically significant association with numerous clinicopathological parameters, including treatment response. Our study indicates that CFTR may be involved in the processes influencing the effectiveness of oncotherapy or in the malignant progression of the disease itself.

人工智能预测揭示 CFTR 与乳腺癌治疗结果的相关性:可行性研究
导言:在过去二十年中,能够预测个体间基因组差异功能后果的硅学工具(其中许多是人工智能驱动的)在非同义单核苷酸变异(nsSNVs)方面最为有效。如果能根据研究目的进行适当选择,就有望获得较高的预测性能。在这项可行性研究中,我们调查了等位基因频率低于 5% 的 nsSNV 的分布情况。为了对推测的功能性后果进行分类,我们在整体决策过程中采用了人工智能驱动的预测器和评分系统进行分层过滤,最终得出了一份优先基因列表:方法:研究对象为同一种族的乳腺癌患者。对影响抗癌药物药代动力学参数或癌症分子信号通路的基因中的种系罕见变异进行了测序。经过人工智能驱动的功能致病性分类和药物基因组学(PGx)数据库的数据挖掘,变异被整理到基因水平,并根据其可能的有害作用进行排序:结果:在乳腺癌患者中,根据预测排序的 12 个基因中有 7 个与肿瘤治疗反应、组织学分级和肿瘤亚型有关。最重要的是,我们发现囊性纤维化跨膜传导调节器(CFTR)中至少有一个罕见nsSNVs的患者组的无病生存期(Log Rank,p=0.002)和总生存期(Log Rank,p=0.006)显著降低:结论:人工智能驱动的硅学分析与 PGx 数据挖掘提供了一种有效的方法,可在种系遗传背景下导航功能性后果,并可轻松整合到未来研究的整体决策过程中。研究显示,CFTR 与许多临床病理参数(包括治疗反应)之间存在统计学意义上的显著关联。我们的研究表明,CFTR 可能参与了影响肿瘤治疗效果或疾病本身恶性进展的过程。
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来源期刊
Oncology
Oncology 医学-肿瘤学
CiteScore
6.00
自引率
2.90%
发文量
76
审稿时长
6-12 weeks
期刊介绍: Although laboratory and clinical cancer research need to be closely linked, observations at the basic level often remain removed from medical applications. This journal works to accelerate the translation of experimental results into the clinic, and back again into the laboratory for further investigation. The fundamental purpose of this effort is to advance clinically-relevant knowledge of cancer, and improve the outcome of prevention, diagnosis and treatment of malignant disease. The journal publishes significant clinical studies from cancer programs around the world, along with important translational laboratory findings, mini-reviews (invited and submitted) and in-depth discussions of evolving and controversial topics in the oncology arena. A unique feature of the journal is a new section which focuses on rapid peer-review and subsequent publication of short reports of phase 1 and phase 2 clinical cancer trials, with a goal of insuring that high-quality clinical cancer research quickly enters the public domain, regardless of the trial’s ultimate conclusions regarding efficacy or toxicity.
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