6533b832fe1ef96bd129ae47
RESEARCH PRODUCT
Machine-learned selection of psychological questionnaire items relevant to the development of persistent pain after breast cancer surgery
Eija KalsoJörn LötschJörn LötschV. DimovaReetta Sipiläsubject
Persistence (psychology)PREDICTIONINVENTORYAngerpatientsCohort StudiesMachine LearningFEAR-AVOIDANCE MODEL0302 clinical medicine030202 anesthesiologySurveys and Questionnairespsychological questionnairesANXIETYProspective cohort studyMastectomySCALEDepression (differential diagnoses)Pain MeasurementPain PostoperativeDepressionmachine-learningFear-avoidance modelMiddle AgedCohortAnxietyFemaleChronic PainSENSITIVITYmedicine.symptomAdultmedicine.medical_specialtyBreast NeoplasmsContext (language use)behavioral disciplines and activitiesVALIDATIONCHRONIC MUSCULOSKELETAL PAIN03 medical and health sciencesbreast cancerBreast cancerPredictive Value of TestsmedicineHumanspersisting painddc:610Psychiatric Status Rating ScalesACUTE POSTOPERATIVE PAINbusiness.industry3126 Surgery anesthesiology intensive care radiologymedicine.diseaseSurgeryAnesthesiology and Pain MedicinePROSPECTIVE COHORTdata sciencebusiness030217 neurology & neurosurgerydescription
Background: Prevention of persistent pain after breast cancer surgery, via early identification of patients at high risk, is a clinical need. Psychological factors are among the most consistently proposed predictive parameters for the development of persistent pain. However, repeated use of long psychological questionnaires in this context may be exhaustive for a patient and inconvenient in everyday clinical practice. Methods: Supervised machine learning was used to create a short form of questionnaires that would provide the same predictive performance of pain persistence as the full questionnaires in a cohort of 1000 women followed up for 3 yr after breast cancer surgery. Machine-learned predictors were first trained with the full-item set of Beck's Depression Inventory (BDI), Spielberger's StateeTrait Anxiety Inventory (STAI), and the StateeTrait Anger Expression Inventory (STAXI-2). Subsequently, features were selected from the questionnaires to create predictors having a reduced set of items. Results: A combined seven-item set of 10% of the original psychological questions from STAI and BDI, provided the same predictive performance parameters as the full questionnaires for the development of persistent postsurgical pain. The seven-item version offers a shorter and at least as accurate identification of women in whom pain persistence is unlikely (almost 95% negative predictive value). Conclusions: Using a data-driven machine-learning approach, a short list of seven items from BDI and STAI is proposed as a basis for a predictive tool for the persistence of pain after breast cancer surgery. Peer reviewed
year | journal | country | edition | language |
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2018-11-01 | British Journal of Anaesthesia |