BackgroundProper and well-timed interventions may improve breast cancer patient adaptation and quality of life (QoL) through treatment and recovery. The challenge is to identify those patients who would benefit most from a particular intervention. The aim of this study was to measure whether the machine learning prediction incorporated in the clinical decision support system (CDSS) improves clinicians' performance to predict patients' QoL during treatment process.MethodsWe conducted two user experiments in which clinicians used a CDSS to predict QoL of breast cancer patients. In both experiments each patient was evaluated both with and without the aid of a machine learning (ML) prediction. In Experiment I, 60 breast cancer patients were evaluated by 6 clinicians. In Experiment II, 90 patients were evaluated by 9 clinicians. The task of clinicians was to predict the patient's quality of life at either 6 (Experiment I) or 12 months post-diagnosis (Experiment II).ResultsTaking into account input from the machine learning prediction considerably improved clinicians' prediction accuracy. Accuracy of clinicians for predicting QoL of patients at 6 months post-diagnosis was .745 (95% CI .668-.821) with the aid of the prediction provided by the ML model and .696 (95% CI .608-.781) without the aid. Clinicians' prediction accuracy at 12 months was .739 (95% CI .667-.812) with the aid and .709 (95% CI .633-.783) without the aid.ConclusionThe results show that the machine learning model integrated into the CDSS can improve clinicians' performance in predicting patients' quality of life.

Aid of a machine learning algorithm can improve clinician predictions of patient quality of life during breast cancer treatments / M. Nuutinen, A.-. Hiltunen, S. Korhonen, I. Haavisto, P. Poikonen-Saksela, J. Mattson, G. Manikis, H. Kondylakis, P. Simos, K. Mazzocco, R. Pat-Horenczyk, B. Sousa, F. Cardoso, I. Manica, I. Kudel, R.-. Leskela. - In: HEALTH AND TECHNOLOGY. - ISSN 2190-7188. - 13:2(2023 Feb 10), pp. 229-244. [10.1007/s12553-023-00733-7]

Aid of a machine learning algorithm can improve clinician predictions of patient quality of life during breast cancer treatments

K. Mazzocco;
2023

Abstract

BackgroundProper and well-timed interventions may improve breast cancer patient adaptation and quality of life (QoL) through treatment and recovery. The challenge is to identify those patients who would benefit most from a particular intervention. The aim of this study was to measure whether the machine learning prediction incorporated in the clinical decision support system (CDSS) improves clinicians' performance to predict patients' QoL during treatment process.MethodsWe conducted two user experiments in which clinicians used a CDSS to predict QoL of breast cancer patients. In both experiments each patient was evaluated both with and without the aid of a machine learning (ML) prediction. In Experiment I, 60 breast cancer patients were evaluated by 6 clinicians. In Experiment II, 90 patients were evaluated by 9 clinicians. The task of clinicians was to predict the patient's quality of life at either 6 (Experiment I) or 12 months post-diagnosis (Experiment II).ResultsTaking into account input from the machine learning prediction considerably improved clinicians' prediction accuracy. Accuracy of clinicians for predicting QoL of patients at 6 months post-diagnosis was .745 (95% CI .668-.821) with the aid of the prediction provided by the ML model and .696 (95% CI .608-.781) without the aid. Clinicians' prediction accuracy at 12 months was .739 (95% CI .667-.812) with the aid and .709 (95% CI .633-.783) without the aid.ConclusionThe results show that the machine learning model integrated into the CDSS can improve clinicians' performance in predicting patients' quality of life.
Clinical decision support system; Breast cancer; Quality of life; Machine learning; User experiment;
Settore M-PSI/01 - Psicologia Generale
Settore MED/06 - Oncologia Medica
Settore ING-INF/05 - Sistemi di Elaborazione delle Informazioni
   Predicting Effective Adaptation to Breast Cancer to Help Women to BOUNCE Back
   BOUNCE
   European Commission
   Horizon 2020 Framework Programme
   777167
10-feb-2023
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/971620
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