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Memristor Models for Early Detection of Sepsis in ICU Patients

机译:ICU患者早期检测败血症的映像模型

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A supervised learning technique is used to carefully train memristor models to predict at an early stage whether a patient in intensive care unit (ICU) has the sepsis. A memristor behaves as a resistor, with a (mem)resistance that changes over time within a bounded interval. The resistance value depends on the full history of an applied voltage difference across the element, in the same way as the state of the brain depends on what a person has experienced in the past. The information contained in a voltage difference time series can be encoded in the resistance value. Clinical variables measured subsequently each hour since the patient’s admittance in ICU are transformed into voltage difference signals with transformation functions. The training procedure involves the optimization of the transformation functions. The decision of whether to predict sepsis or not is taken by reading the value of the resistance. The authors have participated in the Physionet 2019 challenge with the name called "the memristive agents" and their best submission resulted to a utility score 0.20 on a hidden test data-set.
机译:监督学习技术用于仔细列车模型,以预测在早期阶段,无论重症监护单元(ICU)是否具有败血症。映射器的行为作为电阻器,具有(MEM)电阻,在界限间隔内随时间变化。电阻值取决于元素上施加电压差的完整历史,与大脑的状态相同的方式取决于某人过去的经历。电压差时间序列中包含的信息可以在电阻值中编码。随后测量的临床变量每小时测量,因为患者在ICU中的导纳被转换成具有变换函数的电压差信号。培训程序涉及优化转换函数。通过读取阻力的价值,是否预测败血症的决定。作者参加了第2019次挑战,名称是名为“回忆记忆代理”的挑战,他们的最佳提交导致在隐藏的测试数据集中产生0.20的实用程序。

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