Abstract

In the last decade, machine learning has been widely used in different fields, especially because of its capacity to work with complex data. With the support of machine learning techniques, different studies have been using data-driven approaches to better understand some syndromes like mild cognitive impairment, Alzheimer’s disease, schizophrenia, and chronic pain. Chronic pain is a complex disease that can recurrently be misdiagnosed due to its comorbidities with other syndromes with which it shares symptoms. Within that context, several studies have been suggesting different machine learning algorithms to classify or predict chronic pain conditions. Those algorithms were fed with a diversity of data types, from self-report data based on questionnaires to the most advanced brain imaging techniques. In this study, we assessed the sensitivity of different algorithms and datasets classifying chronic pain syndromes. Together with this assessment, we highlighted important methodological steps that should be taken into account when an experiment using machine learning is conducted. The best results were obtained by ensemble-based algorithms and the dataset containing the greatest diversity of information, resulting in area under the receiver operating curve (AUC) values of around 0.85. In addition, the performance of the algorithms is strongly related to the hyper-parameters. Thus, a good strategy for hyper-parameter optimization should be used to extract the most from the algorithm. These findings support the notion that machine learning can be a powerful tool to better understand chronic pain conditions.

Highlights

  • Pain is a subjective perceptual phenomenon, which is mainly determined by emotional, cognitive, and sociocultural factors [1,2]

  • We evaluated five datasets with the following compositions: (1) age dataset with only the information about participants’ ages; (2) basic-wo-age dataset with data from the Beck depression inventory II (BDI), State–Trait Anxiety Inventory (STAI)

  • We assessed different machine learning algorithms to classify participants into chronic pain patients or healthy controls based on self-report and pain sensitivity data

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Summary

Introduction

Pain is a subjective perceptual phenomenon, which is mainly determined by emotional, cognitive, and sociocultural factors (e.g., mood, learning, attention, and beliefs) [1,2]. The International Association for the Study of Pain (IASP) defines chronic pain as pain that lasts more than three or six months [4,5]. Other symptoms, such as sleep disturbance, mood changes, and fatigue, are associated with chronic pain syndromes [6,7]. These physical, cognitive, and emotional alterations clearly affect patients’ daily routines, leading to impairments of quality of life and disability. For instance, surveys and self-report questionnaires [8,9], Quantitative Sensory Tests (QSTs) [10,11,12,13], genetic factors [14,15,16], physical activity patterns [17,18,19,20], Electroencephalography (EEG) [21], neuroimaging [22,23,24], and, more recently, functional near-infrared spectroscopy (fNIRS) [25] have been incorporated into studies of the emotional and cognitive factors

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