Purpose: High-quality symptom management and supportive care are essential components of comprehensive cancer care. We aimed to describe the development of an evidence-based automated decisional algorithm for patients with cancer that had specific, actionable, clinical, evidence-based recommendations to improve patient care, communication, and management.
Methods: We reviewed existing literature and clinical practice guidelines to identify priority domains of patient care and potential clinical recommendations. Two multidisciplinary clinical advisory groups used a two-stage consensus decision-making approach to determine domains of care and patient-reported outcome (PRO) measures and subsequently developed automated algorithms with clear clinical recommendations amendable to intervention in clinical settings.
Results: Algorithms were developed to inform management of patient symptoms, distress, and unmet needs. Three PRO measures were chosen: Distress Thermometer and problem checklist, Edmonton Symptom Assessment Scale, and the Supportive Care Needs Survey-Screening Tool 9. PRO items were mapped to five domains of patient well-being: physical, emotional, practical, social and family, and maintenance of well-being. A total of 15 actionable clinical recommendations tailored to specific issues of concern were established.
Conclusion: Using automated algorithms and clinical recommendations provides a platform for streamlining and systematizing the use of PROs to inform risk-stratified guideline-informed care. The series of algorithms, which set out systematized care pathways for the clinical care of patients with cancer, can be used to potentially inform patient-centered care.