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Patient Identity Verification Based on Physiological Signal Fusion

机译:基于生理信号融合的患者身份验证

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Patient identification is crucial in providing proper care in hospitals or other care-facilities. Failure to correctly identify patients can result in a variety of problems such as medication errors, transfusion errors, testing errors, and duplication of EHR records. The current solutions for identifying patients in a hospital setting rely on confirming the patient's identity several times, the use of labels, bar-codes, and RFID tags. However, these solutions are not always sufficient and patient identification errors are common. In this paper we present a patient identity verification approach that can complement existing patient identification solutions in the event that they cannot be relied upon. Our approach works by fusing common physiological signals (vital signs) already collected from the patients. The idea is to fuse two physiological signals electrocardiogram (ECG) with arterial blood pressure (ABP) to identify an individual patient. Existing identification/authentication solutions based on cardiac signals have been primarily tested on healthy patients whose signals exhibit normative rhythm and morphology. However, in our context not all patients can be expected to have normative cardiac signals as many of them may be suffering from ailments that affect the cardiac process. The fusion of multiple ECG and ABP allows us to ensure patient identification even when the patients have ailments that affect their cardiac rhythms. An evaluation of our approach showed that it is over 97% accurate in identifying patients with non-normative cardiac rhythms and morphology with over 99% accuracy for patients whose cardiac rhythms are normative. Further, our approach can identify a patient in as little as 3 seconds, which makes it practical in real-world scenarios.
机译:患者识别对于在医院或其他护理机构中提供适当的护理至关重要。无法正确识别患者会导致各种问题,例如用药错误,输血错误,测试错误以及EHR记录重复。用于在医院环境中识别患者的当前解决方案依赖于多次确认患者身份,使用标签,条形码和RFID标签。然而,这些解决方案并不总是足够的,并且患者识别错误是常见的。在本文中,我们提出了一种患者身份验证方法,该方法可以在无法依靠现有患者识别解决方案的情况下对其进行补充。我们的方法通过融合已经从患者身上收集的常见生理信号(生命体征)来工作。这个想法是将两个生理信号心电图(ECG)与动脉血压(ABP)融合以识别单个患者。现有的基于心脏信号的识别/认证解决方案已经在健康的患者身上进行了测试,这些患者的信号表现出正常的节律和形态。然而,在我们的背景下,并非所有患者都可以预期到正常的心脏信号,因为他们中的许多人可能患有影响心脏过程的疾病。多个ECG和ABP的融合使我们即使在患者患有影响其心律的疾病时也能确保对患者的识别。对我们方法的评估表明,在识别非规范性心律和形态方面的患者准确率超过97%,对于规范性心律的患者,准确率超过99%。此外,我们的方法可以在短短3秒钟内识别出患者,这使其在现实世界中可行。

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