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超越疼痛:运用无监督机器学习识别小纤维神经病变的表型聚类

Beyond pain: Using Unsupervised Machine Learning to Identify Phenotypic Clusters of Small Fiber Neuropathy.

作者信息

Murin Peyton J, Gao Vivian D, Geisler Stefanie

出版信息

medRxiv. 2024 Sep 10:2024.09.09.24313341. doi: 10.1101/2024.09.09.24313341.

Abstract

BACKGROUND AND OBJECTIVES

Small fiber neuropathy (SFN) is characterized by dysfunction and loss of peripheral unmyelinated and thinly myelinated nerve fibers, resulting in a phenotype that includes varying combinations of somatosensory and dysautonomia symptoms, which can be profoundly disabling and lead to decreased quality of life. Treatment aimed mainly at pain reduction, which may not target the underlying pathophysiology, is frequently ineffective. Another impediment to the effective management of SFN may be the significant between-patient heterogeneity. Accordingly, we launched this study to gain insights into the symptomatic variability of SFN and determine if SFN patients can be sub-grouped based on clinical characteristics.

METHODS

To characterize the phenotype and investigate how patients with SFN differ from those with large fiber involvement, 105 patients with skin-biopsy proven SFN and 45 with mixed fiber neuropathy (MFN) were recruited. Using unsupervised machine learning, SFN patients were clustered based upon symptom concurrence and severity. Demographics, clinical data, symptoms, and skin biopsy- and laboratory findings were compared between the groups.

RESULTS

MFN- as compared to SFN patients, were more likely to be male, older, had a lower intraepidermal nerve fiber density at the ankle and more frequent abnormal immunofixation. Beyond these differences, symptom prevalence and intensities were similar in the two cohorts. SFN patients comprised three distinct phenotypic clusters, which differed significantly in symptom severity, co-occurrence, localization, and skin biopsy findings. Only one subgroup, constituting about 20% of the patient population, was characterized by intense neuropathic pain, which was always associated with several other SFN symptoms of similarly high intensities. A pauci-symptomatic cluster comprised patients who experienced few SFN symptoms, generally of low to moderate intensity. The largest cluster was characterized by intense fatigue, myalgias and subjective weakness, but lower intensities of burning pain and paresthesia.

DISCUSSION

This data-driven study introduces a new approach to subgrouping patients with SFN. Considering both neuropathic pain and pernicious symptoms beyond pain, we identified three clusters, which may be related to distinct pathophysiological mechanisms. Although additional validation will be required, our findings represent a step towards stratified treatment approaches and, ultimately, personalized treatment.

摘要

背景与目的

小纤维神经病变(SFN)的特征是外周无髓鞘和薄髓鞘神经纤维功能障碍及丧失,导致出现包括各种体感和自主神经功能障碍症状组合的表型,这些症状可能严重致残并导致生活质量下降。主要旨在减轻疼痛的治疗可能未针对潜在的病理生理学,通常效果不佳。有效管理SFN的另一个障碍可能是患者之间存在显著的异质性。因此,我们开展了这项研究,以深入了解SFN的症状变异性,并确定SFN患者是否可以根据临床特征进行亚组划分。

方法

为了描述表型并研究SFN患者与有大纤维受累的患者有何不同,招募了105例经皮肤活检证实为SFN的患者和45例混合性纤维神经病变(MFN)患者。使用无监督机器学习,根据症状的同时出现情况和严重程度对SFN患者进行聚类。比较了两组之间的人口统计学、临床数据、症状以及皮肤活检和实验室检查结果。

结果

与SFN患者相比,MFN患者更可能为男性、年龄更大,踝关节处的表皮内神经纤维密度更低,免疫固定异常更频繁。除了这些差异外,两个队列中的症状患病率和强度相似。SFN患者包括三个不同的表型聚类,它们在症状严重程度、同时出现情况、定位和皮肤活检结果方面存在显著差异。只有一个亚组,约占患者总数的20%,其特征是剧烈的神经性疼痛,且总是与其他几种强度同样高的SFN症状相关。一个症状较少的聚类包括经历很少SFN症状的患者,这些症状通常强度低至中度。最大的聚类的特征是严重疲劳、肌痛和主观虚弱,但灼痛和感觉异常的强度较低。

讨论

这项数据驱动的研究引入了一种对SFN患者进行亚组划分的新方法。考虑到神经性疼痛和疼痛以外的有害症状,我们确定了三个聚类,它们可能与不同的病理生理机制有关。尽管还需要进一步验证,但我们的发现朝着分层治疗方法以及最终的个性化治疗迈出了一步。

相似文献

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Small-fiber neuropathy: Expanding the clinical pain universe.小纤维神经病:扩展临床疼痛领域。
J Peripher Nerv Syst. 2019 Mar;24(1):19-33. doi: 10.1111/jns.12298. Epub 2019 Jan 8.

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