A Comprehensive Review of the Impact of Machine Learning and Omics on Rare Neurological Diseases

Nofe Alganmi
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Abstract

Background: Rare diseases, predominantly caused by genetic factors and often presenting neurological manifestations, are significantly underrepresented in research. This review addresses the urgent need for advanced research in rare neurological diseases (RNDs), which suffer from a data scarcity and diagnostic challenges. Bridging the gap in RND research is the integration of machine learning (ML) and omics technologies, offering potential insights into the genetic and molecular complexities of these conditions. Methods: We employed a structured search strategy, using a combination of machine learning and omics-related keywords, alongside the names and synonyms of 1840 RNDs as identified by Orphanet. Our inclusion criteria were limited to English language articles that utilized specific ML algorithms in the analysis of omics data related to RNDs. We excluded reviews and animal studies, focusing solely on studies with the clear application of ML in omics data to ensure the relevance and specificity of our research corpus. Results: The structured search revealed the growing use of machine learning algorithms for the discovery of biomarkers and diagnosis of rare neurological diseases (RNDs), with a primary focus on genomics and radiomics because genetic factors and imaging techniques play a crucial role in determining the severity of these diseases. With AI, we can improve diagnosis and mutation detection and develop personalized treatment plans. There are, however, several challenges, including small sample sizes, data heterogeneity, model interpretability, and the need for external validation studies. Conclusions: The sparse knowledge of valid biomarkers, disease pathogenesis, and treatments for rare diseases presents a significant challenge for RND research. The integration of omics and machine learning technologies, coupled with collaboration among stakeholders, is essential to develop personalized treatment plans and improve patient outcomes in this critical medical domain.
全面回顾机器学习和 Omics 对罕见神经疾病的影响
背景:罕见疾病主要由遗传因素引起,通常表现为神经系统疾病,但在研究中的代表性却严重不足。本综述探讨了罕见神经系统疾病(RNDs)高级研究的迫切需求,这些疾病存在数据稀缺和诊断难题。机器学习(ML)和全息技术的整合弥补了 RND 研究的空白,为深入了解这些疾病的遗传和分子复杂性提供了可能。方法:我们采用了结构化搜索策略,结合使用机器学习和全息技术相关关键词,以及 Orphanet 确定的 1840 种 RND 的名称和同义词。我们的纳入标准仅限于在分析与RNDs相关的omics数据时使用了特定ML算法的英文文章。我们排除了综述和动物研究,只关注在全局数据中明确应用了 ML 的研究,以确保研究语料的相关性和特异性。结果结构化搜索显示,机器学习算法在发现生物标志物和诊断罕见神经疾病(RNDs)方面的应用越来越广泛,主要集中在基因组学和放射组学方面,因为遗传因素和成像技术在决定这些疾病的严重程度方面起着至关重要的作用。借助人工智能,我们可以改进诊断和突变检测,并制定个性化治疗方案。然而,我们也面临着一些挑战,包括样本量小、数据异质性、模型可解释性以及外部验证研究的必要性。结论:对罕见病的有效生物标志物、疾病发病机制和治疗方法的了解十分稀少,这给 RND 研究带来了巨大挑战。要在这一关键医学领域制定个性化治疗方案并改善患者预后,必须整合全息技术和机器学习技术,并与利益相关者开展合作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.70
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