论文标题

边缘设备和云机学习在护理解决方案中使用成像诊断进行人口筛查的角色

Role of Edge Device and Cloud Machine Learning in Point-of-Care Solutions Using Imaging Diagnostics for Population Screening

论文作者

Kharat, Amit, Duddalwar, Vinay, Saoji, Krishna, Gaikwad, Ashrika, Kulkarni, Viraj, Naik, Gunjan, Lokwani, Rohit, Kasliwal, Swaraj, Kondal, Sudeep, Gupte, Tanveer, Pant, Aniruddha

论文摘要

边缘设备正在彻底改变诊断。边缘设备可以驻留在成像工具内或附近,例如数字XRAY,CT,MRI或超声设备。这些设备是CPU或GPU,具有先进的处理深度处理和机器学习(人工智能)算法,可帮助分类和分类解决方案,以作为正常或异常,结核病或健康(如果进行TB筛查),可疑的COVID-19/其他肺炎或其他肺炎或其他不可避免的(在医院或Hoct of Hospical或Hotspot设置)。这些可以部署为筛查点(POC)解决方案;对于数字和便携式X射线设备尤其如此。边缘设备学习还可以用于乳房X线摄影和CT研究,在该研究中,它可以分别识别微钙化和中风。在成像专家实际审查扫描并进行最终诊断之前,这些解决方案可以被视为前放映前的第一行。这些工具的关键优势在于它们是即时的,可以在专家实际上无法进行预筛查的情况下进行远程部署,并且由于纳米学习数据中心位于设备旁边,因此不受Internet带宽的限制。

Edge devices are revolutionizing diagnostics. Edge devices can reside within or adjacent to imaging tools such as digital Xray, CT, MRI, or ultrasound equipment. These devices are either CPUs or GPUs with advanced processing deep and machine learning (artificial intelligence) algorithms that assist in classification and triage solutions to flag studies as either normal or abnormal, TB or healthy (in case of TB screening), suspected COVID-19/other pneumonia or unremarkable (in hospital or hotspot settings). These can be deployed as screening point-of-care (PoC) solutions; this is particularly true for digital and portable X-ray devices. Edge device learning can also be used for mammography and CT studies where it can identify microcalcification and stroke, respectively. These solutions can be considered the first line of pre-screening before the imaging specialist actually reviews scans and makes a final diagnosis. The key advantage of these tools is that they are instant, can be deployed remotely where experts are not available to perform pre-screening before the experts actually review, and are not limited by internet bandwidth as the nano learning data centers are placed next to the device.

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