Background: Health professionals are often faced with the need to identify women at risk of manifesting poor psychological resilience following the diagnosis and treatment of breast cancer. Machine learning algorithms are increasingly used to support clinical decision support (CDS) tools in helping health professionals identify women who are at risk of adverse well-being outcomes and plan customized psychological interventions for women at risk. Clinical flexibility, cross-validated performance accuracy, and model explainability permitting person-specific identification of risk factors are highly desirable features of such tools. Objective: This study aimed to develop and cross-validate machine learning models designed to identify breast ca...
Machine learning (ML) has been recently introduced to develop prognostic classification models that ...
Funding: This work has been funded by the European Commission and the Horizon 2020 framework.BACKGRO...
Background: Despite the continued progress of medicine, dealing with breast cancer is becoming a maj...
Identifying individual patient characteristics that contribute to long-term mental health deteriorat...
Proper and well-timed interventions may improve breast cancer patient adaptation, resilience and qua...
Objective: To develop a predictive risk model (PRM) for patient-reported anxiety after treatment com...
Objective: A Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) a...
BackgroundPatients with cancer starting systemic treatment programs, such as chemotherapy, often dev...
Background: Prevention of persistent pain after breast cancer surgery, via early identification of p...
Objective: Women living with and beyond breast cancer (BC) frequently encounter cancer-related infor...
Background: Individual patients differ in their psychological response when receiving a cancer diagn...
As high breast cancer survival rates are achieved nowadays, irrespective of type of surgery performe...
ObjectiveA Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) and...
BACKGROUND: Psychologic distress and manifest mental disorders are overlooked in 30-50% of patients ...
Predictive risk models are advocated in psychosocial oncology practice to provide timely and appropr...
Machine learning (ML) has been recently introduced to develop prognostic classification models that ...
Funding: This work has been funded by the European Commission and the Horizon 2020 framework.BACKGRO...
Background: Despite the continued progress of medicine, dealing with breast cancer is becoming a maj...
Identifying individual patient characteristics that contribute to long-term mental health deteriorat...
Proper and well-timed interventions may improve breast cancer patient adaptation, resilience and qua...
Objective: To develop a predictive risk model (PRM) for patient-reported anxiety after treatment com...
Objective: A Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) a...
BackgroundPatients with cancer starting systemic treatment programs, such as chemotherapy, often dev...
Background: Prevention of persistent pain after breast cancer surgery, via early identification of p...
Objective: Women living with and beyond breast cancer (BC) frequently encounter cancer-related infor...
Background: Individual patients differ in their psychological response when receiving a cancer diagn...
As high breast cancer survival rates are achieved nowadays, irrespective of type of surgery performe...
ObjectiveA Clinical Decision Support System (CDSS) that can amass Electronic Health Record (EHR) and...
BACKGROUND: Psychologic distress and manifest mental disorders are overlooked in 30-50% of patients ...
Predictive risk models are advocated in psychosocial oncology practice to provide timely and appropr...
Machine learning (ML) has been recently introduced to develop prognostic classification models that ...
Funding: This work has been funded by the European Commission and the Horizon 2020 framework.BACKGRO...
Background: Despite the continued progress of medicine, dealing with breast cancer is becoming a maj...