耐药癫痫多维早期预测评分。

Kyung Wook Kang, Yong Won Cho, Sang Kun Lee, Ki-Young Jung, Ji Hyun Kim, Dong Wook Kim, Sang-Ahm Lee, Seung Bong Hong, In-Seop Na, So-Hyun Lee, Won-Ki Baek, Seok-Yong Choi, Myeong-Kyu Kim
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引用次数: 0

摘要

背景和目的:在耐药癫痫(DRE)患者中实现良好的术后预后需要早期转诊进行术前检查。本研究的目的是探讨一种非专家易于使用的用户友好的早期DRE预测模型的可能性。方法:采用两步基因型分析,1)对初始测试集(n=243)进行全外显子组测序(WES), 2)对验证集(n=311)进行目标测序。基于多中心病例对照研究设计,采用WES数据集,选择11个遗传预测因子和2个临床预测因子建立DRE风险预测模型。计算初始测试集和验证集中所选遗传预测因子(EPS-DREgen)、临床预测因子(EPS-DREcln)和两种预测因子组合(EPS-DREmix)的每组DRE的早期预测评分(EPS-DRE)。结果:预测因子组合组的多维EPS-DREmix比单维EPS-DREgen或EPS-DREcln提供了更好的结果数据匹配。与以往的研究不同,EPS-DREmix模型仅使用11个遗传预测因子和2个临床预测因子,但在区分DRE和药物反应性癫痫方面表现出良好的区分能力。这些结果使用一个不相关的验证集进行验证。结论:我们的研究结果表明EPS-DREmix在早期DRE预测中具有良好的性能,是一种用户友好的工具,易于在实际临床试验中应用,特别是对于没有详细的DRE评估知识或设备的非专家。EPS-DREmix模型的性能有待进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multidimensional Early Prediction Score for Drug-Resistant Epilepsy.

Multidimensional Early Prediction Score for Drug-Resistant Epilepsy.

Multidimensional Early Prediction Score for Drug-Resistant Epilepsy.

Multidimensional Early Prediction Score for Drug-Resistant Epilepsy.

Background and purpose: Achieving favorable postoperative outcomes in patients with drug-resistant epilepsy (DRE) requires early referrals for preoperative examinations. The purpose of this study was to investigate the possibility of a user-friendly early DRE prediction model that is easy for nonexperts to utilize.

Methods: A two-step genotype analysis was performed, by applying 1) whole-exome sequencing (WES) to the initial test set (n=243) and 2) target sequencing to the validation set (n=311). Based on a multicenter case-control study design using the WES data set, 11 genetic and 2 clinical predictors were selected to develop the DRE risk prediction model. The early prediction scores for DRE (EPS-DRE) was calculated for each group of the selected genetic predictors (EPS-DREgen), clinical predictors (EPS-DREcln), and two types of predictor mix (EPS-DREmix) in both the initial test set and the validation set.

Results: The multidimensional EPS-DREmix of the predictor mix group provided a better match to the outcome data than did the unidimensional EPS-DREgen or EPS-DREcln. Unlike previous studies, the EPS-DREmix model was developed using only 11 genetic and 2 clinical predictors, but it exhibited good discrimination ability in distinguishing DRE from drug-responsive epilepsy. These results were verified using an unrelated validation set.

Conclusions: Our results suggest that EPS-DREmix has good performance in early DRE prediction and is a user-friendly tool that is easy to apply in real clinical trials, especially by nonexperts who do not have detailed knowledge or equipment for assessing DRE. Further studies are needed to improve the performance of the EPS-DREmix model.

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