观察研究
医学
谵妄
心理干预
重症监护医学
前瞻性队列研究
癌症
决策树
期限(时间)
急诊医学
内科学
肿瘤科
数据挖掘
精神科
计算机科学
物理
量子力学
作者
Ken Kurisu,Shuji Inada,Isseki Maeda,Asao Ogawa,Satoru Iwase,Tatsuo Akechi,Tatsuya Morita,Shunsuke Oyamada,Takuhiro Yamaguchi,Kengo Imai,Rika Nakahara,Keisuke Kaneishi,Nobuhisa Nakajima,Masahiko Sumitani,Kazuhiro Yoshiuchi
标识
DOI:10.1017/s1478951521001565
摘要
There is no widely used prognostic model for delirium in patients with advanced cancer. The present study aimed to develop a decision tree prediction model for a short-term outcome.This is a secondary analysis of a multicenter and prospective observational study conducted at 9 psycho-oncology consultation services and 14 inpatient palliative care units in Japan. We used records of patients with advanced cancer receiving pharmacological interventions with a baseline Delirium Rating Scale Revised-98 (DRS-R98) severity score of ≥10. A DRS-R98 severity score of <10 on day 3 was defined as the study outcome. The dataset was randomly split into the training and test dataset. A decision tree model was developed using the training dataset and potential predictors. The area under the curve (AUC) of the receiver operating characteristic curve was measured both in 5-fold cross-validation and in the independent test dataset. Finally, the model was visualized using the whole dataset.Altogether, 668 records were included, of which 141 had a DRS-R98 severity score of <10 on day 3. The model achieved an average AUC of 0.698 in 5-fold cross-validation and 0.718 (95% confidence interval, 0.627-0.810) in the test dataset. The baseline DRS-R98 severity score (cutoff of 15), hypoxia, and dehydration were the important predictors, in this order.We developed an easy-to-use prediction model for the short-term outcome of delirium in patients with advanced cancer receiving pharmacological interventions. The baseline severity of delirium and precipitating factors of delirium were important for prediction.
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