使用临床特征训练的随机森林分类模型区分功能丧失和功能获得的SCN8A变体。

IF 3 3区 医学 Q2 CLINICAL NEUROLOGY
Joshua B Hack, Kyle Horning, Denise M Juroske Short, John M Schreiber, Joseph C Watkins, Michael F Hammer
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引用次数: 0

摘要

背景和目的:电压门控钠通道基因SCN8A的致病变异与广泛的临床疾病结果相关。神经科医生面临的一个关键挑战是确定患者是否携带功能获得(GOF)或功能丧失(LOF)变体来指导治疗决策,然而在体外研究中推断通道功能在临床上通常是不可行的。在这项研究中,我们开发了一种预测建模方法,根据初步诊断时出现的临床特征对变异进行分类。方法:我们通过异种细胞系统的体外研究,或者因为变异被归类为截断,并记录了临床特征,对被认为携带SCN8A GOF和LOF变异的个体进行了详尽的搜索。这导致总共69个LOF变异:34个错义和35个截断变异,包括9个无义、13个移码、6个剪接位点、6个索引和1个大缺失。然后,我们收集了一组具有已知功能影响的变异,排除了携带与癫痫相关的其他基因位点变异的个体。然后,我们使用从体外方法测试的一组变量中随机选择的45个LOF变量和45个GOF变量的真值集来训练基于随机森林的预测模型。结果:分配给个体的表型类别与GOF或LOF变体密切相关。所有GOF变异体患者均发生早发性癫痫发作(平均发病年龄为4.5±3.1个月),而LOF变异体患者仅64.4%发生癫痫发作,且以晚发性失神癫痫为主(平均发病年龄为40.0±38.1个月)。我们的模型具有很高的准确率(95.4%),该模型包括5个关键临床特征,将GOF和LOF变异患者分为两个不同的队列,这些队列在癫痫发作的年龄、癫痫发作的发展、癫痫类型、智力残疾以及发育性和癫痫性脑病方面存在差异。讨论:结果支持了SCN8A GOF和LOF变异患者具有不同临床表型的假设。本研究建立的临床模型具有很大的实用性,因为它为SCN8A诊断过程中预测患者变异的功能类别提供了一个快速和高度准确的平台,有助于初始治疗决策和改善预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Distinguishing Loss-of-Function and Gain-of-Function <i>SCN8A</i> Variants Using a Random Forest Classification Model Trained on Clinical Features.

Distinguishing Loss-of-Function and Gain-of-Function <i>SCN8A</i> Variants Using a Random Forest Classification Model Trained on Clinical Features.

Distinguishing Loss-of-Function and Gain-of-Function <i>SCN8A</i> Variants Using a Random Forest Classification Model Trained on Clinical Features.

Distinguishing Loss-of-Function and Gain-of-Function SCN8A Variants Using a Random Forest Classification Model Trained on Clinical Features.

Background and objectives: Pathogenic variants at the voltage-gated sodium channel gene, SCN8A, are associated with a wide spectrum of clinical disease outcomes. A critical challenge for neurologists is to determine whether patients carry gain-of-function (GOF) or loss-of-function (LOF) variants to guide treatment decisions, yet in vitro studies to infer channel function are often not feasible in the clinic. In this study, we develop a predictive modeling approach to classify variants based on clinical features present at initial diagnosis.

Methods: We performed an exhaustive search for individuals deemed to carry SCN8A GOF and LOF variants by means of in vitro studies in heterologous cell systems, or because the variant was classified as truncating, and recorded clinical features. This resulted in a total of 69 LOF variants: 34 missense and 35 truncating variants, including 9 nonsense, 13 frameshift, 6 splice site, 6 indels, and 1 large deletion. We then assembled a truth set of variants with known functional effects, excluding individuals carrying variants at other loci associated with epilepsy. We then trained a predictive model based on random forest using this truth set of 45 LOF variants and 45 GOF variants randomly selected from a set of variants tested by in vitro methods.

Results: Phenotypic categories assigned to individuals correlated strongly with GOF or LOF variants. All patients with GOF variants experienced early-onset seizures (mean age at onset = 4.5 ± 3.1 months) while only 64.4% patients with LOF variants had seizures, most of which were late-onset absence seizures (mean age at onset = 40.0 ± 38.1 months). With high accuracy (95.4%), our model including 5 key clinical features classified individuals with GOF and LOF variants into 2 distinct cohorts differing in age at seizure onset, development of seizures, seizure type, intellectual disability, and developmental and epileptic encephalopathy.

Discussion: The results support the hypothesis that patients with SCN8A GOF and LOF variants represent distinct clinical phenotypes. The clinical model developed in this study has great utility because it provides a rapid and highly accurate platform for predicting the functional class of patient variants during SCN8A diagnosis, which can aid in initial treatment decisions and improve prognosis.

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来源期刊
Neurology-Genetics
Neurology-Genetics Medicine-Neurology (clinical)
CiteScore
6.30
自引率
3.20%
发文量
107
审稿时长
15 weeks
期刊介绍: Neurology: Genetics is an online open access journal publishing peer-reviewed reports in the field of neurogenetics. Original articles in all areas of neurogenetics will be published including rare and common genetic variation, genotype-phenotype correlations, outlier phenotypes as a result of mutations in known disease-genes, and genetic variations with a putative link to diseases. This will include studies reporting on genetic disease risk and pharmacogenomics. In addition, Neurology: Genetics will publish results of gene-based clinical trials (viral, ASO, etc.). Genetically engineered model systems are not a primary focus of Neurology: Genetics, but studies using model systems for treatment trials are welcome, including well-powered studies reporting negative results.
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