The COVID-19 pandemic has highlighted the need for a tool to speed up triage in ultrasound scans and provide clinicians with fast access to relevant information. The proposed video-summarization technique is a step in this direction that provides clinicians access to relevant key-frames from a given ultrasound scan (such as lung ultrasound) while reducing resource, storage and bandwidth requirements. We propose a new unsupervised reinforcement learning (RL) framework with novel rewards that facilitates unsupervised learning avoiding tedious and impractical manual labelling for summarizing ultrasound videos to enhance its utility as a triage tool in the emergency department (ED) and for use in telemedicine. Using an attention ensemble of encoders, the high dimensional image is projected into a low dimensional latent space in terms of: a) reduced distance with a normal or abnormal class (classifier encoder), b) following a topology of landmarks (segmentation encoder), and c) the distance or topology agnostic latent representation (convolutional autoencoders). The decoder is implemented using a bi-directional long-short term memory (Bi-LSTM) which utilizes the latent space representation from the encoder. Our new paradigm for video summarization is capable of delivering classification labels and segmentation of key landmarks for each of the summarized keyframes. Validation is performed on lung ultrasound (LUS) dataset, that typically represent potential use cases in telemedicine and ED triage acquired from different medical centers across geographies (India, Spain and Canada).
翻译:COVID-19大流行的COVID-19大流行突出表明,需要一种工具来加快超声波扫描的分级速度,并为临床医生提供快速获取相关信息的机会。拟议的视频合成技术是朝着这一方向迈出的一步,使临床医生能够从特定超声波扫描(如肺超声波)中获得相关关键框架,同时减少资源、储存和带宽要求。我们提议一个新的未经监督的强化学习框架,并配有新的奖励,便于在不受监督的情况下学习避免为超声波视频的缩略图而贴上烦琐和不切实际的手工标签,以加强其在应急部门(ED)和远程医疗中作为三角工具的效用。高维图像是朝这个方向迈出的一步,它使临床医生能够从特定超声波扫描器中获取相关关键关键键框框框框框框(Silation Inderialalalalalal-demologue) 执行的解调机解码(Silal-develrial-deal-degrational-deal-degrational-degradutional-degraphal-deal-deal-deal-deal-degradustration)加拿大的每个Slicial-deal-deal-degradudududududududududeal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal-deal),这是用于了我们SDdal-demodeal 。