Medical Instruments Whereabouts Using Artificial Intelligence

Ms. Aishwarya Gowda A G, Hui-Kai Su, W. Kuo
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引用次数: 1

Abstract

In the growing requirement of healthcare needs the healthcare devices and instruments are used in every level of treatments. All of these devices are not just used once in their lifetime. Most of the devices are very expensive and are reused on different patients depending on their requirements. As the reusing increases, the history of usage and disinfecting with proper cleaning plays a major role in maintaining hygiene. This process of maintaining the required hygiene will stop the spread of diseases and infections to other patients. Hence, knowing the complete whereabouts of medical instruments will ensure the safety and provide complete information about the devices at a single tap before using the device. This gives a clear understanding of the devices for doctors or health care workers before the use of any reusable medical instruments. The process of recording the whereabouts of these instruments is accomplished with the latest striving technology like Artificial Intelligence. This will not just help in knowing the history but also provides clarity of information and trust on the devices before being used. LSTM is a model based on artificial intelligence which adds on in detecting the device and the purpose of usage automatically. The whereabouts are identified and carried out with a well-trained AI model and additive real-time data updates.
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使用人工智能定位医疗器械
在日益增长的医疗保健需求中,医疗保健设备和仪器被用于各个层次的治疗。所有这些设备在其使用寿命中都不只是使用一次。大多数设备都非常昂贵,并且根据不同的病人的需求重复使用。随着重复使用的增加,使用历史和适当清洁消毒在保持卫生方面起着重要作用。这种保持必要卫生的过程将阻止疾病传播和感染给其他病人。因此,了解医疗器械的完整位置将确保安全,并在使用设备之前一次点击提供有关设备的完整信息。这使医生或卫生保健工作者在使用任何可重复使用的医疗器械之前清楚地了解设备。记录这些仪器下落的过程是通过人工智能等最新的技术来完成的。这不仅有助于了解历史,还可以在使用设备之前提供清晰的信息和信任。LSTM是一种基于人工智能的自动检测设备和使用目的的模型。通过训练有素的人工智能模型和附加的实时数据更新来识别和执行位置。
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