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Genomic risk prediction of aromatase inhibitor‐related arthralgia in patients with breast cancer using a novel machine‐learning algorithm

机译:新型机器学习算法预测乳腺癌患者芳香化酶抑制剂相关关节痛的基因组风险

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Many breast cancer (BC) patients treated with aromatase inhibitors (AIs) develop aromatase inhibitor‐related arthralgia (AIA). Candidate gene studies to identify AIA risk are limited in scope. We evaluated the potential of a novel analytic algorithm (NAA) to predict AIA using germline single nucleotide polymorphisms (SNP) data obtained before treatment initiation . Systematic chart review of 700 AI‐treated patients with stage I‐III BC identified asymptomatic patients ( n ?=?39) and those with clinically significant AIA resulting in AI termination or therapy switch ( n ?=?123). Germline DNA was obtained and SNP genotyping performed using the Affymetrix UK BioBank Axiom Array to yield 695,277 SNPs. SNP clusters that most closely defined AIA risk were discovered using an NAA that sequentially combined statistical filtering and a machine‐learning algorithm. NCBI PhenGenI and Ensemble databases defined gene attribution of the most discriminating SNPs. Phenotype, pathway, and ontologic analyses assessed functional and mechanistic validity. Demographics were similar in cases and controls. A cluster of 70 SNPs, correlating to 57 genes, was identified. This SNP group predicted AIA occurrence with a maximum accuracy of 75.93%. Strong associations with arthralgia, breast cancer, and estrogen phenotypes were seen in 19/57 genes (33%) and were functionally consistent. Using a NAA, we identified a 70 SNP cluster that predicted AIA risk with fair accuracy. Phenotype, functional, and pathway analysis of attributed genes was consistent with clinical phenotypes. This study is the first to link a specific SNP/gene cluster to AIA risk independent of candidate gene bias.
机译:许多接受芳香化酶抑制剂(AI)治疗的乳腺癌(BC)患者会发展出芳香化酶抑制剂相关的关节痛(AIA)。鉴定AIA风险的候选基因研究范围有限。我们使用治疗开始前获得的种系单核苷酸多态性(SNP)数据评估了一种新型分析算法(NAA)预测AIA的潜力。对700例经AI治疗的I-III BC期患者进行系统图表审查,发现无症状患者(n = 39)和临床上显着性AIA导致AI终止或治疗转换的患者(n = 123)。获得胚系DNA,并使用Affymetrix UK BioBank公理阵列进行SNP基因分型,得到695,277个SNP。使用NAA发现了最接近定义AIA风险的SNP集群,该NAA将统计过滤和机器学习算法顺序结合起来。 NCBI PhenGenI和Ensemble数据库定义了最区分SNP的基因属性。表型,途径和本体分析评估功能和机制的有效性。病例和对照的人口统计学相似。鉴定出70个SNP的簇,与57个基因相关。该SNP组预测AIA的发生率最高为75.93%。在19/57基因(33%)中发现与关节痛,乳腺癌和雌激素表型密切相关,并且在功能上是一致的。使用NAA,我们确定了70个SNP簇,可以准确预测AIA风险。归因基因的表型,功能和途径分析与临床表型一致。这项研究是第一个将特定SNP /基因簇与AIA风险相关联的研究,而与候选基因偏倚无关。

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