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机器学习可以预测帕金森病中的轻度认知障碍。

Machine learning can predict mild cognitive impairment in Parkinson's disease.

作者信息

Amboni Marianna, Ricciardi Carlo, Adamo Sarah, Nicolai Emanuele, Volzone Antonio, Erro Roberto, Cuoco Sofia, Cesarelli Giuseppe, Basso Luca, D'Addio Giovanni, Salvatore Marco, Pace Leonardo, Barone Paolo

机构信息

Department of Medicine, Surgery and Dentistry "Scuola Medica Salernitana", University of Salerno, Baronissi, Italy.

IDC Hermitage-Capodimonte, Naples, Italy.

出版信息

Front Neurol. 2022 Nov 17;13:1010147. doi: 10.3389/fneur.2022.1010147. eCollection 2022.

Abstract

BACKGROUND

Clinical markers of cognitive decline in Parkinson's disease (PD) encompass several mental non-motor symptoms such as hallucinations, apathy, anxiety, and depression. Furthermore, freezing of gait (FOG) and specific gait alterations have been associated with cognitive dysfunction in PD. Finally, although low cerebrospinal fluid levels of amyloid-β42 have been found to predict cognitive decline in PD, hitherto PET imaging of amyloid-β (Aβ) failed to consistently demonstrate the association between Aβ plaques deposition and mild cognitive impairment in PD (PD-MCI).

AIM

Finding significant features associated with PD-MCI through a machine learning approach.

PATIENTS AND METHODS

Patients were assessed with an extensive clinical and neuropsychological examination. Clinical evaluation included the assessment of mental non-motor symptoms and FOG using the specific items of the MDS-UPDRS I and II. Based on the neuropsychological examination, patients were classified as subjects without and with MCI (noPD-MCI, PD-MCI). All patients were evaluated using a motion analysis system. A subgroup of PD patients also underwent amyloid PET imaging. PD-MCI and noPD-MCI subjects were compared with a univariate statistical analysis on demographic data, clinical features, gait analysis variables, and amyloid PET data. Then, machine learning analysis was performed two times: Model 1 was implemented with age, clinical variables (hallucinations/psychosis, depression, anxiety, apathy, sleep problems, FOG), and gait features, while Model 2, including only the subgroup performing PET, was implemented with PET variables combined with the top five features of the former model.

RESULTS

Seventy-five PD patients were enrolled (33 PD-MCI and 42 noPD-MCI). PD-MCI vs. noPD-MCI resulted in older and showed worse gait patterns, mainly characterized by increased dynamic instability and reduced step length; when comparing amyloid PET data, the two groups did not differ. Regarding the machine learning analyses, evaluation metrics were satisfactory for Model 1 overcoming 80% for accuracy and specificity, whereas they were disappointing for Model 2.

CONCLUSIONS

This study demonstrates that machine learning implemented with specific clinical features and gait variables exhibits high accuracy in predicting PD-MCI, whereas amyloid PET imaging is not able to increase prediction. Additionally, our results prompt that a data mining approach on certain gait parameters might represent a reliable surrogate biomarker of PD-MCI.

摘要

背景

帕金森病(PD)认知功能下降的临床标志物包括多种精神性非运动症状,如幻觉、冷漠、焦虑和抑郁。此外,冻结步态(FOG)和特定的步态改变与PD的认知功能障碍有关。最后,尽管已发现脑脊液中淀粉样蛋白-β42水平较低可预测PD的认知功能下降,但迄今为止,淀粉样蛋白-β(Aβ)的PET成像未能始终如一地证明Aβ斑块沉积与PD轻度认知障碍(PD-MCI)之间的关联。

目的

通过机器学习方法寻找与PD-MCI相关的显著特征。

患者与方法

对患者进行广泛的临床和神经心理学检查。临床评估包括使用MDS-UPDRS I和II的特定项目评估精神性非运动症状和FOG。根据神经心理学检查,将患者分为无MCI和有MCI的受试者(非PD-MCI、PD-MCI)。所有患者均使用运动分析系统进行评估。一部分PD患者还接受了淀粉样蛋白PET成像检查。对PD-MCI和非PD-MCI受试者在人口统计学数据、临床特征、步态分析变量和淀粉样蛋白PET数据方面进行单变量统计分析比较。然后,进行两次机器学习分析:模型1纳入年龄、临床变量(幻觉/精神病、抑郁、焦虑、冷漠、睡眠问题、FOG)和步态特征;而模型2(仅包括进行PET检查的亚组)纳入PET变量以及前一个模型的前五项特征。

结果

共纳入75例PD患者(33例PD-MCI和42例非PD-MCI)。PD-MCI组与非PD-MCI组相比年龄更大,步态模式更差,主要表现为动态不稳定性增加和步长缩短;比较淀粉样蛋白PET数据时,两组无差异。关于机器学习分析,模型1的评估指标令人满意,准确率和特异性超过80%,而模型2的结果令人失望。

结论

本研究表明,结合特定临床特征和步态变量进行的机器学习在预测PD-MCI方面具有较高的准确性,而淀粉样蛋白PET成像无法提高预测能力。此外,我们的结果提示,对某些步态参数进行数据挖掘方法可能代表PD-MCI的可靠替代生物标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c3a2/9714435/675b045bfc1a/fneur-13-1010147-g0001.jpg

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