Given a cardiac-arrest patient being monitored in the ICU (intensive care unit) for brain activity, how can we predict their health outcomes as early as possible? Early decision-making is critical in many applications, e.g. monitoring patients may assist in early intervention and improved care. On the other hand, early prediction on EEG data poses several challenges: (i) earliness-accuracy trade-off; observing more data often increases accuracy but sacrifices earliness, (ii) large-scale (for training) and streaming (online decision-making) data processing, and (iii) multi-variate (due to multiple electrodes) and multi-length (due to varying length of stay of patients) time series. Motivated by this real-world application, we present BeneFitter that infuses the incurred savings from an early prediction as well as the cost from misclassification into a unified domain-specific target called benefit. Unifying these two quantities allows us to directly estimate a single target (i.e. benefit), and importantly, dictates exactly when to output a prediction: when benefit estimate becomes positive. BeneFitter (a) is efficient and fast, with training time linear in the number of input sequences, and can operate in real-time for decision-making, (b) can handle multi-variate and variable-length time-series, suitable for patient data, and (c) is effective, providing up to 2x time-savings with equal or better accuracy as compared to competitors.
翻译:鉴于在伊斯兰法院联盟(密集护理单位)对脑活动进行心脏侵入病人的监测,我们如何能尽早预测其健康结果?早期决策在许多应用中至关重要,例如监测病人可能有助于早期干预和改善护理。另一方面,早期预测EEEG数据带来若干挑战:(一) 耳肠准确性交易;观察更多的数据往往会提高准确性,但会牺牲听力;(二) 大规模(培训)和流(在线决策)数据处理,以及(三) 多变(由于多种电极)和多变(由于病人逗留时间长短不同)的时间序列。受这个现实世界应用的驱动,我们向BeneFitter介绍,由于早期预测产生的节余以及错误分类到统一的特定领域目标而带来的代价,因此产生了一些挑战。 这两大数量使我们能够直接估计一个单一目标(即受益)和流(在线)和流(由于多重变异性)的预测何时受益:何时能够对准确性做出预测,BeneFritter(a)在真实性、可变式的序列中提供准确性数据,可以快速和可快速地提供准确性数据,(a)在实际和多变式序列中提供准确性数据。