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用于医疗数据采集的语音激活自动化平台的可行性:CardioCube。

Feasibility of a voice-enabled automated platform for medical data collection: CardioCube.

机构信息

Research and Development Division, CardioCube Corp., Los Angeles, CA, United States.

Cedars-Sinai Medical Center, Los Angeles, CA, United States.

出版信息

Int J Med Inform. 2019 Sep;129:388-393. doi: 10.1016/j.ijmedinf.2019.07.001. Epub 2019 Jul 4.

DOI:10.1016/j.ijmedinf.2019.07.001
PMID:31445282
Abstract

AIM

A feasibility study was conducted to evaluate implementation of a voice-enabled automated platform for collection of medical data from patients with cardiovascular disease: CardioCube.

METHODS

The study enrolled 22 individuals (10 males, 45.5%) including 9 patients with cardiovascular disease and 13 healthy participants. Utilizing (1) voice-enabled patient registration software implemented on the Amazon Echo and (2) web-based electronic health record (EHR) system, study participants verbally answered a set of clinical questions. Primary endpoint: accuracy of ​the ​CardioCube system. Secondary endpoints: acceptability, usability and technical performance. The study was performed at the Outpatient Cardiology Clinic, Cedars-Sinai Medical Center, Los Angeles, CA, USA.

RESULTS

The CardioCube system collected 432 data points with a high agreement level between verbally provided data and corresponding EHR information (accuracy 97.51%). The CardioCube was able to automatically generate a summarized medical report, which was instantly available for a doctor in the web-based EHR system. Patients reported CardioCube was "easy to use". Applicability of the system was graded excellent by the medical staff. A single session utilized less than 0.002% of available computational resources.

CONCLUSION

CardioCube can collect, index and document medical data using a voice interface. In this pilot study, CardioCube supported healthcare professionals by performing time-consuming paperwork during patient registration.

摘要

目的

本研究旨在评估一种基于语音的自动化平台(CardioCube)用于收集心血管疾病患者医疗数据的可行性。

方法

该研究纳入 22 名参与者(10 名男性,45.5%),包括 9 名心血管疾病患者和 13 名健康对照者。参与者通过使用(1)亚马逊 Echo 上的语音启用型患者注册软件,以及(2)基于网络的电子健康记录(EHR)系统,口头回答了一组临床问题。主要终点:CardioCube 系统的准确性。次要终点:可接受性、可用性和技术性能。本研究在加利福尼亚州洛杉矶雪松西奈医疗中心的门诊心脏病学诊所进行。

结果

CardioCube 系统共收集了 432 个数据点,口头提供的数据与相应的 EHR 信息具有高度一致性(准确性 97.51%)。CardioCube 能够自动生成一份简明的医疗报告,该报告即时可在基于网络的 EHR 系统中供医生查阅。患者报告称 CardioCube“易于使用”。医务人员对系统的适用性评价为优秀。单次会话仅使用了不到 0.002%的可用计算资源。

结论

CardioCube 可以使用语音接口收集、索引和记录医疗数据。在这项初步研究中,CardioCube 通过在患者注册期间执行繁琐的文书工作来协助医疗专业人员。

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