Abstract

Introduction: Numerous non-motor symptoms are associated with Parkinson’s disease (PD) including fatigue. The challenge in the clinic is to detect relevant non-motor symptoms while keeping patient-burden of questionnaires low and to take potential subgroups such as sex differences into account. The Fatigue Severity Scale (FSS) effectively detects clinically significant fatigue in PD patients. Machine learning techniques can determine which FSS items best predict clinically significant fatigue yet the choice of technique is crucial as it determines the stability of results.Methods: 182 records of PD patients were analyzed with two machine learning algorithms: random forest (RF) and Boruta. RF and Boruta calculated feature importance scores, which measured how much impact an FSS item had in predicting clinically significant fatigue. Items with the highest feature importance scores were the best predictors. Principal components analysis (PCA) grouped highly related FSS items together.Results: RF, Boruta and PCA demonstrated that items 8 (“Fatigue is among my three most disabling symptoms”) and 9 (“Fatigue interferes with my work, family or social life”) were the most important predictors. Item 5 (“Fatigue causes frequent problems for me”) was an important predictor for females, and item 6 (“My fatigue prevents sustained physical functioning”) was important for males. Feature importance scores’ standard deviations were large for RF (14–66%) but small for Boruta (0–5%).Conclusion: The clinically most informative questions may be how disabling fatigue is compared to other symptoms and interference with work, family and friends. There may be some sex-related differences with frequency of fatigue-related complaints in females and endurance-related complaints in males yielding significant information. Boruta but not RF yielded stable results and might be a better tool to determine the most relevant components of abbreviated questionnaires. Further research in this area would be beneficial in order to replicate these findings with other machine learning algorithms, and using a more representative sample of PD patients.

Highlights

  • Numerous non-motor symptoms are associated with Parkinson’s disease (PD) including fatigue

  • The primary aim of this study is to identify which items of the Fatigue Severity Scale (FSS) best predict clinically significant fatigue in male and female PD patients comparing three different statistical analysis methods: random forest, Boruta and principal components analysis (PCA)

  • The results obtained from random forest and Boruta were nearly identical. For both male and female PD patients, Q8 (“Fatigue is among my three most disabling symptoms”) and Q9 (“Fatigue interferes with my work, family or social life”) were among the most important predictors and Q1 (“My motivation is lower when I am fatigued”) and Q2 (“Exercise brings on my fatigue”) were among the least important predictors

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Summary

Introduction

Numerous non-motor symptoms are associated with Parkinson’s disease (PD) including fatigue. The challenge in the clinic is to detect relevant non-motor symptoms while keeping patient-burden of questionnaires low and to take potential subgroups such as sex differences into account. The Fatigue Severity Scale (FSS) effectively detects clinically significant fatigue in PD patients. PD features numerous motor and non-motor manifestations across a diverse patient population (Clarke, 2007). Among these symptoms, the prevalence of fatigue has been reported to affect upto 81% of PD patients, and approximately one-third of PD patients consider fatigue to be their most disabling symptom (Stocchi et al, 2014). The Movement Disorders Society Task Force on Rating Scales for PD reviewed the descriptive properties, psychometric performance, and the overall impression of seven fatigue rating scales which have been used to assess PD patients (Friedman et al, 2010)

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