Department of Pharmacy, National University of Singapore, Singapore.
J Palliat Med. 2012 Aug;15(8):863-9. doi: 10.1089/jpm.2011.0417. Epub 2012 Jun 12.
Palliative chemotherapy is often administered to terminally ill cancer patients to relieve symptoms. Yet, unnecessary use of chemotherapy can worsen patients' quality of life due to treatment-related toxicities. Thus, accurate prediction of survival in terminally ill patients can help clinicians decide on the most appropriate palliative care for these patients. However, studies have shown that clinicians often make imprecise predictions of survival in cancer patients. Hence, the purpose of this study was to create a clinical decision support tool to predict survival in cancer patients beyond 120 days after palliative chemotherapy.
Data were obtained from a retrospective study of 400 randomly selected terminally ill cancer patients in the National Cancer Centre Singapore (NCCS) from 2008 to 2009. After removing patients with missing data, there were 325 patients remaining for model development. Three classification algorithms, naive Bayes (NB), neural network (NN), and support vector machine (SVM) were used to create the models. A final model with the best prediction performance was then selected to develop the tool.
The NN model had the best prediction performance. The accuracy, specificity, sensitivity, and area under the curve (AUC) of this model were 78%, 82%, 74%, and 0.857, respectively. Five patient attributes (albumin level, alanine transaminase level (ATL), absolute neutrophil count, Eastern Cooperative Oncology Group (ECOG) status, and number of metastatic sites) were included in the model.
A decision support tool to predict survival in cancer patients beyond 120 days after palliative chemotherapy was created. With further validation, this tool coupled with the professional judgment of clinicians can help improve patient care.
姑息化疗常被用于缓解终末期癌症患者的症状。然而,由于治疗相关毒性,不必要的化疗可能会使患者的生活质量恶化。因此,准确预测终末期患者的生存情况有助于临床医生为这些患者提供最合适的姑息治疗。然而,研究表明,临床医生在预测癌症患者的生存情况时往往不够准确。因此,本研究的目的是开发一种临床决策支持工具,以预测姑息化疗后 120 天以上的癌症患者的生存情况。
数据来自于 2008 年至 2009 年在新加坡国家癌症中心(NCCS)进行的一项回顾性研究,共纳入 400 名随机选择的终末期癌症患者。在去除缺失数据的患者后,有 325 名患者用于模型开发。使用朴素贝叶斯(NB)、神经网络(NN)和支持向量机(SVM)三种分类算法来创建模型。然后选择具有最佳预测性能的最终模型来开发工具。
NN 模型具有最佳的预测性能。该模型的准确性、特异性、敏感性和曲线下面积(AUC)分别为 78%、82%、74%和 0.857。模型中纳入了 5 个患者属性(白蛋白水平、丙氨酸转氨酶水平(ATL)、绝对中性粒细胞计数、东部合作肿瘤学组(ECOG)状态和转移部位数量)。
开发了一种预测姑息化疗后 120 天以上癌症患者生存情况的决策支持工具。通过进一步验证,该工具结合临床医生的专业判断,可以帮助改善患者的护理。