Intensive Care Unit, The First Affiliated Hospital of Jinan University, Guangzhou, 510630, People's Republic of China.
Department of Clinical Research, The First Affiliated Hospital of Jinan University, Guangzhou, Guangdong Province, China.
BMC Emerg Med. 2022 Feb 11;22(1):26. doi: 10.1186/s12873-022-00582-z.
Elderly patients with sepsis have many comorbidities, and the clinical reaction is not obvious. Thus, clinical treatment is difficult. We planned to use the laboratory test results and comorbidities of elderly patients with sepsis from a large-scale public database Medical Information Mart for Intensive Care (MIMIC) IV to build a random survival forest (RSF) model and to evaluate the model's predictive value for these patients.
Clinical information of elderly patients with sepsis in MIMIC IV database was collected retrospectively. Machine learning (RSF) was used to select the top 30 variables in the training cohort to build the final RSF model. The model was compared with the traditional scoring systems SOFA, SAPSII, and APSIII. The performance of the model was evaluated by C index and calibration curve.
A total of 6,503 patients were enrolled in the study. The top 30 important variables screened by RSF were used to construct the final RSF model. The new model provided a better C-index (0.731 in the validation cohort). The calibration curve described the agreement between the predicted probability of RSF model and the observed 30-day survival.
We constructed a prognostic model to predict a 30-day mortality risk in elderly patients with sepsis based on machine learning (RSF algorithm), and it proved superior to the traditional scoring systems. The risk factors affecting the patients were also ranked. In addition to the common risk factors of vasopressors, ventilator use, and urine output. Newly added factors such as RDW, type of ICU unit, malignant cancer, and metastatic solid tumor also significantly influence prognosis.
老年脓毒症患者合并多种基础疾病,临床反应不明显,临床治疗难度大。我们拟从大规模公共数据库 Medical Information Mart for Intensive Care (MIMIC) IV 中脓毒症老年患者的实验室检查结果和合并症中筛选变量,建立随机生存森林(RSF)模型,并评估该模型对老年脓毒症患者的预测价值。
回顾性收集 MIMIC-IV 数据库中脓毒症老年患者的临床资料。使用机器学习(RSF)方法从训练队列中筛选前 30 个变量构建最终的 RSF 模型,与传统评分系统 SOFA、SAPSII、APSSIII 进行比较,采用 C 指数和校准曲线评估模型的性能。
共纳入 6503 例患者。使用 RSF 筛选出的前 30 个重要变量构建最终的 RSF 模型,新模型提供了更好的 C 指数(验证队列中为 0.731)。校准曲线描述了 RSF 模型预测概率与观察到的 30 天生存率之间的一致性。
我们构建了一个基于机器学习(RSF 算法)的预测脓毒症老年患者 30 天死亡率的预后模型,与传统评分系统相比,该模型具有更高的预测价值。对影响患者预后的危险因素进行了排名,除了常见的血管加压素、呼吸机使用和尿量等风险因素外,RDW、入住 ICU 类型、恶性肿瘤和转移性实体瘤等新添加的因素也显著影响预后。