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arxiv: 1712.00563 · v1 · pith:EQWYLGD5new · submitted 2017-12-02 · 💻 cs.LG · stat.AP· stat.ML

Anesthesiologist-level forecasting of hypoxemia with only SpO2 data using deep learning

classification 💻 cs.LG stat.APstat.ML
keywords blooddatapatientdeephypoxemialearningonlyoxygen
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We use a deep learning model trained only on a patient's blood oxygenation data (measurable with an inexpensive fingertip sensor) to predict impending hypoxemia (low blood oxygen) more accurately than trained anesthesiologists with access to all the data recorded in a modern operating room. We also provide a simple way to visualize the reason why a patient's risk is low or high by assigning weight to the patient's past blood oxygen values. This work has the potential to provide cutting-edge clinical decision support in low-resource settings, where rates of surgical complication and death are substantially greater than in high-resource areas.

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