Predictive Models on Pain and Severity in FM Patients
Development of Predictive Models Based on Artificial Intelligence for the Analysis of the Psychosocial Profile of the Patient With Fibromyalgia on Pain and Severity of the Disease.
The primary goal of this research project is to develop different prediction models in fibromyalgia disease through the application of machine learning techniques and to assess the explainability of the results.
As specific objectives the research project intends: to predicting Fibromyalgia severity of patients based on clinical variables; to assess the relevance of social-psycho-demographic variables on the fibromyalgia severity of the patients; to predict the pain suffered by the patients as well as the impact of the fibromyalgia on patient's life; to categorize fibromyalgia group of patients depending on their levels of Fibromyalgia severity.
調査の概要
状態
条件
詳細な説明
Fibromyalgia (FM) is a condition characterized by chronic musculoskeletal pain whose pathophysiology is still unclear. Furthermore, this pathology is frequently associated with sleep disturbances, pronounced fatigue, morning stiffness, poor quality of life, cognitive disturbances (mainly memory problems) and psychological problems (depression, anxiety and stress).
FM is associated with greater negative affect, which implies a general state of anguish composed of aversive emotions such as sadness, fear, anger and guilt. Patients with FM commonly suffer from high rates of anxiety, depression, pain catastrophizing, and stress levels, which are associated with a worsening of symptoms, including own cognitive.
Machine learning (ML) and data mining had been successfully applied, over the past few decades, to build computer-aided diagnosis (CAD) systems for diagnosing complex health issues with good accuracy and efficiency by recognizing potentially useful, original, and comprehensible patterns in health data. Thus, machine learning provides useful tools for multivariate data analysis allowing predictions based on the established models and hence offering a suitable advantage for risk assessment of many diseases including heart failure. Machine learning offers advantages not only for clinical prediction but also for feature ranking improving the interpretation of the outputs by clinical professionals.
Explainable ML models, also known as interpretable ML models, allow healthcare experts to make reasonable and data-driven decisions to provide personalized treatment that can ultimately lead to high quality of service in healthcare. These models fall into eXplainable Artificial Intelligence (XAI) field, defined as suite of ML techniques that 1) produce more explainable models while maintaining a high level of learning performance, and 2) enable humans to understand, appropriately trust, and effectively manage the emerging generation of artificially intelligent partners.
研究の種類
入学 (予想される)
連絡先と場所
研究連絡先
- 名前:Rubén Arroyo Fernández, MSc
- 電話番号:86589 925803600
- メール:rubenarroyofernandez@gmail.com
研究場所
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Toledo
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Talavera De La Reina、Toledo、スペイン、45600
- Hospital General Nuestra Señora del Prado
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コンタクト:
- Rubén Arroyo Fernández, MSc
- 電話番号:86589 925803600
- メール:rubenarroyofernandez@gmail.com
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-
参加基準
適格基準
就学可能な年齢
健康ボランティアの受け入れ
受講資格のある性別
サンプリング方法
調査対象母集団
説明
Inclusion Criteria:
- Age between 18 and 65 years.
- Fullfilled the 2010 American Collegue of Rheumathology criteria for fibromyalgia.
- Understanding of spoken and written Spanish.
Exclusion Criteria:
- Diagnosed psychiatric pathology.
- Rheumatic pathology not medically controlled.
- Neurological pathologies that make evaluations difficult.
研究計画
研究はどのように設計されていますか?
デザインの詳細
この研究は何を測定していますか?
主要な結果の測定
結果測定 |
メジャーの説明 |
時間枠 |
---|---|---|
Pain intensity
時間枠:Baseline.
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It will be measured with a visual analog scale (VAS) of 100 millimeters in length.
The subject has to indicate the level ofpain he feels, being 0 the absence of pain and 100 the maximum imaginable.
|
Baseline.
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Disease severity.
時間枠:Baseline.
|
It will be measured using the Polysymptomatic Distress Scale (PDS) (or Fibromyalgia Severity Scale), composed of the sum of the following two scales:
|
Baseline.
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Referred pain area after suprathreshold pressure stimulation.
時間枠:Baseline.
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A pressure algometer (Force Ten™, Wagner Instruments, USA) will be used. It will be performed on the infraspinatus muscle (point equidistant between the midpoint of the spine of the scapula, the inferior angle of the scapula and the midpoint of the medial border of the scapula) at a constant suprathreshold pressure (20% above the pressure pain threshold) for 60 seconds. After the stimulation, the subject should draw the induced pain area on a digital bodychart using the Navigate Pain application (Navigate Pain, Aalborg University, Denmark). |
Baseline.
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二次結果の測定
結果測定 |
メジャーの説明 |
時間枠 |
---|---|---|
Fibromyalgia Impact Quality-of-Life.
時間枠:Baseline.
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It will be measured with the version adapted to the Spanish of the Fibromyalgia Impact Questionnaire (FIQ).
|
Baseline.
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Anxiety.
時間枠:Baseline.
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The version adapted to Spanish from the State Scale (STAI-ES) of the State-Trait Anxiety Inventory (STAI) will be used.
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Baseline.
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Pain catastrophizing.
時間枠:Baseline.
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The Spanish version of the Pain Catastrophizing Scale (PCS) will be used.
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Baseline.
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Depression.
時間枠:Baseline.
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The adaptation to the Spanish of Beck Depression Inventory II will be used.
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Baseline.
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協力者と研究者
研究記録日
主要日程の研究
研究開始 (予想される)
一次修了 (予想される)
研究の完了 (予想される)
試験登録日
最初に提出
QC基準を満たした最初の提出物
最初の投稿 (実際)
学習記録の更新
投稿された最後の更新 (実際)
QC基準を満たした最後の更新が送信されました
最終確認日
詳しくは
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