Predictive Factors Associated with Declining Psycho-Oncological Support in Patients with Cancer

Author:

Hecht Karoline1,Günther Moritz Philipp1ORCID,Kirchebner Johannes2,Götz Anna3,von Känel Roland1ORCID,Schulze Jan Ben1,Euler Sebastian1

Affiliation:

1. Department of Consultation-Liaison-Psychiatry and Psychosomatic Medicine, University Hospital Zurich, University of Zurich, Culmannstrasse 8, 8091 Zürich, Switzerland

2. Department of Forensic Psychiatry, University Hospital of Psychiatry Zurich, Lenggstrasse 31, 8032 Zürich, Switzerland

3. Department of Hemato-Oncology, University Hospital Zurich, University of Zurich, Rämistrasse 100, 8091 Zürich, Switzerland

Abstract

(1) Background: International cancer treatment guidelines recommend low-threshold psycho-oncological support based on nurses’ routine distress screening (e.g., via the distress thermometer and problem list). This study aims to explore factors which are associated with declining psycho-oncological support in order to increase nurses’ efficiency in screening patients for psycho-oncological support needs. (2) Methods: Using machine learning, routinely recorded clinical data from 4064 patients was analyzed for predictors of patients declining psycho-oncological support. Cross validation and nested resampling were used to guard against model overfitting. (3) Results: The developed model detects patients who decline psycho-oncological support with a sensitivity of 89% (area under the cure of 79%, accuracy of 68.5%). Overall, older patients, patients with a lower score on the distress thermometer, fewer comorbidities, few physical problems, and those who do not feel sad, afraid, or worried refused psycho-oncological support. (4) Conclusions: Thus, current screening procedures seem worthy to be part of daily nursing routines in oncology, but nurses may need more time and training to rule out misconceptions of patients on psycho-oncological support.

Publisher

MDPI AG

Reference38 articles.

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