Abstract End-of-life patients with cancer may find expressing their symptoms difficult if they can no longer communicate verbally because of deteriorating health. In this study, we assessed these symptoms using machine learning, which has excellent predictive capabilities and has recently been applied in healthcare. We performed a retrospective clinical survey involving 213 patients with cancer from August 2015 to August 2016. We divided the reported symptoms into two groups—visible and nonvisible symptoms. We used decision tree analysis, an analytical machine learning method that organizes and analyzes information in the form of a tree diagram to visually represent the information structure. Our machine learning model used patient backgrou...
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study i...
With an estimated 1.4 million cancer diagnosis worldwide and the increasing death of cancer patients...
AbstractCancer has been characterized as a heterogeneous disease consisting of many different subtyp...
© 2018 American Academy of Hospice and Palliative Medicine Context: Clinicians document cancer patie...
© 2018 American Academy of Hospice and Palliative Medicine Context: Clinicians document cancer patie...
Abstract Background Access to palliative care is a key quality metric which most healthcare organiza...
Abstract Background The purpose of this study was to explore predictors for anxiety as the most comm...
Background: Prevention of persistent pain following breast cancer surgery, via early identification ...
Introduction: Improving palliative care is a priority worldwide as this population experiences poor ...
BACKGROUND: Psychologic distress and manifest mental disorders are overlooked in 30-50% of patients ...
Abstract Machine learning algorithms may address prognostic inaccuracy among clinicians by identifyi...
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study i...
Background: Early prediction of symptoms and mortality risks for COVID-19 patients would improve hea...
Cancer is the leading disease in the world by the increasing number of new patients and deaths every...
Abstract Background From patient-reported surveys and individual interviews by health care providers...
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study i...
With an estimated 1.4 million cancer diagnosis worldwide and the increasing death of cancer patients...
AbstractCancer has been characterized as a heterogeneous disease consisting of many different subtyp...
© 2018 American Academy of Hospice and Palliative Medicine Context: Clinicians document cancer patie...
© 2018 American Academy of Hospice and Palliative Medicine Context: Clinicians document cancer patie...
Abstract Background Access to palliative care is a key quality metric which most healthcare organiza...
Abstract Background The purpose of this study was to explore predictors for anxiety as the most comm...
Background: Prevention of persistent pain following breast cancer surgery, via early identification ...
Introduction: Improving palliative care is a priority worldwide as this population experiences poor ...
BACKGROUND: Psychologic distress and manifest mental disorders are overlooked in 30-50% of patients ...
Abstract Machine learning algorithms may address prognostic inaccuracy among clinicians by identifyi...
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study i...
Background: Early prediction of symptoms and mortality risks for COVID-19 patients would improve hea...
Cancer is the leading disease in the world by the increasing number of new patients and deaths every...
Abstract Background From patient-reported surveys and individual interviews by health care providers...
Purpose: Knowledge regarding symptom clusters may inform targeted interventions. The current study i...
With an estimated 1.4 million cancer diagnosis worldwide and the increasing death of cancer patients...
AbstractCancer has been characterized as a heterogeneous disease consisting of many different subtyp...