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New Symptom-Based Predictive Tool for Survival at Seven and Thirty Days Developed by Palliative Home Care Teams

机译:由姑息家庭护理团队开发的新的基于症状的预测工具可在7天和30天生存

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>Aim: This study sought to develop models to predict survival at 7 and 30 days based on symptoms detected by palliative home care teams (PHCTs).>Materials and methods: This prospective analytic study included a 6-month recruitment period with patient monitoring until death or 180 days after recruitment. The inclusion criteria consisted of age greater than 18 years, advanced cancer, and treatment provided by participating PHCTs between April and July 2009. The study variables included death at 7 or 30 days, survival time, age, gender, place of residence, type of tumor and extension, presence of 11 signs and symptoms measured with a 0–3 Likert scale, functional and cognitive status, and use of a subcutaneous butterfly needle. The statistics applied included a descriptive analysis according to the percentage or mean±standard deviation. For symptom comparison between surviving and nonsurviving patients, the χ2 test was used. Classification and regression tree (CART) methodology was used for model development. An internal validation system (cross-validation with 10 partitions) was used to ensure generalization of the models. The area under the receiver operating characteristics (ROC) curve was calculated (with a 95% confidence interval) to assess the validation of the models.>Results: A total of 698 patients were included. The mean age of the patients was 73.7±12 years, and 60.3% were male. The most frequent type of neoplasm was digestive (37.6%). The mean Karnofsky score was 51.8±14, the patients' cognitive status according to the Pfeiffer test was 2.6±4 errors, and 8.3% of patients required a subcutaneous butterfly needle. Each model provided 8 decision rules with a probability assignment range between 2.2% and 99.1%. The model used to predict the probability of death at 7 days included the presence of anorexia and dysphagia and the level of consciousness, and this model produced areas under the curve (AUCs) of 0.88 (0.86–0.90) and 0.81 (0.79–0.83). The model used to predict the probability of death at 30 days included the presence of asthenia and anorexia and the level of consciousness, and this model produced AUCs of 0.78 (0.77–0.80) and 0.77 (0.75–0.79).>Conclusion: For patients with advanced cancer treated by PHCTs, the use of classification schemes and decision trees based on specific symptoms can help clinicians predict survival at 7 and 30 days.
机译:>目标:该研究旨在根据姑息性家庭护理小组(PHCT)检测到的症状,开发模型来预测7天和30天的生存率。>材料和方法:研究包括6个月的募集期,对患者进行监测直至死亡或募集后180天。纳入标准包括年龄大于18岁,晚期癌症以及参与的PHCT在2009年4月至2009年7月之间提供的治疗。研究变量包括7天或30天死亡,生存时间,年龄,性别,居住地,肿瘤和扩展,使用0-3 Likert量表测量的11种症状和体征,功能和认知状态以及皮下蝶形针的使用。所应用的统计数据包括根据百分比或平均值±标准偏差的描述性分析。为了比较存活患者和未存活患者的症状,使用了χ 2 检验。分类和回归树(CART)方法用于模型开发。内部验证系统(具有10个分区的交叉验证)用于确保模型的通用性。计算接收器工作特征(ROC)曲线下的面积(置信区间为95%)以评估模型的有效性。>结果:总共包括698名患者。患者的平均年龄为73.7±12岁,男性为60.3%。最常见的肿瘤类型是消化道肿瘤(37.6%)。 Karnofsky平均评分为51.8±14,根据Pfeiffer检验,患者的认知状况为2.6±4错误,并且8.3%的患者需要皮下蝶形针。每个模型提供了8个决策规则,概率分配范围在2.2%到99.1%之间。用于预测7天死亡概率的模型包括厌食和吞咽困难以及意识水平的存在,并且该模型产生的曲线下面积(AUC)为0.88(0.86-0.90)和0.81(0.79-0.83) 。用于预测30天死亡概率的模型包括乏力和厌食以及意识水平的存在,该模型产生的AUC分别为0.78(0.77–0.80)和0.77(0.75–0.79)。>结论: 对于通过PHCT治疗的晚期癌症患者,使用基于特定症状的分类方案和决策树可以帮助临床医生预测7天和30天的生存率。

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