S. Schellenberger, Kilin Shi, J. P. Wiedemann, F. Lurz, R. Weigel, A. Koelpin
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引用次数: 1
摘要
败血症是一种危及生命的疾病,必须在早期治疗。医生使用序贯器官衰竭评估评分来尽早识别。此外,从业人员多年的经验有助于迅速作出反应。发现败血症并使用抗生素治疗的时间越长,死亡率就越低。在今年的PhysioNet/Computing In Cardiology挑战赛中,目标是在临床预测前6小时自动检测败血症。这篇论文描述了一个长短期记忆网络的实现,在提供的每小时生理数据中早期检测败血症。在对完整隐藏测试集进行测试时,实现了0.29的效用得分。所有参赛作品都以“404:败血症未找到”的团队名称提交。
An Ensemble LSTM Architecture for Clinical Sepsis Detection
Sepsis is a life-threatening condition that has to be treated at an early stage. Doctors use the Sequential Organ Failure Assessment score for the earliest possible recognition. In addition, the practitioner’s many years of experience help in order to facilitate an immediate response. Mortality decreases with every hour that sepsis is detected and treated with antibiotics. In this years PhysioNet/Computing in Cardiology Challenge the objective is to automatically detect sepsis six hours before the clinical prediction. This paper describes the implementation of an Long Short-Term Memory network for an early detection of sepsis in provided hourly physiological data. An utility score of 0.29 was achieved when testing on the full hidden test set. All entries were submitted using the team name "404: Sepsis not found".