Pranav Kulkarni, Adway Kanhere, Eliot L Siegel, Paul H Yi, Vishwa S Parekh
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We evaluate our framework by streaming chest X-rays for classification and abdomen CT scans for liver and spleen segmentation and comparing them with the original versions of each dataset. For classification, our results show that ISLE reduced data transmission and decoding time by at least 92% and 88%, respectively, while increasing throughput by more than 3.72 × . For both segmentation tasks, ISLE reduced data transmission and decoding time by at least 82% and 88%, respectively, while increasing throughput by more than 2.9 × . In all three tasks, the ISLE streamed data had no impact on the AI system's diagnostic performance (all P > 0.05). Therefore, our results indicate that our framework can address inefficiencies in current imaging infrastructures by improving data and computational efficiency of AI deployments in the clinical environment without impacting clinical decision-making using AI systems.</p>","PeriodicalId":516858,"journal":{"name":"Journal of imaging informatics in medicine","volume":" ","pages":"3250-3263"},"PeriodicalIF":0.0000,"publicationDate":"2024-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11612124/pdf/","citationCount":"0","resultStr":"{\"title\":\"ISLE: An Intelligent Streaming Framework for High-Throughput AI Inference in Medical Imaging.\",\"authors\":\"Pranav Kulkarni, Adway Kanhere, Eliot L Siegel, Paul H Yi, Vishwa S Parekh\",\"doi\":\"10.1007/s10278-024-01173-z\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>As the adoption of artificial intelligence (AI) systems in radiology grows, the increase in demand for greater bandwidth and computational resources can lead to greater infrastructural costs for healthcare providers and AI vendors. 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For both segmentation tasks, ISLE reduced data transmission and decoding time by at least 82% and 88%, respectively, while increasing throughput by more than 2.9 × . In all three tasks, the ISLE streamed data had no impact on the AI system's diagnostic performance (all P > 0.05). 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引用次数: 0
摘要
随着人工智能(AI)系统在放射学中的应用日益增多,对更大带宽和计算资源的需求也随之增加,这可能会导致医疗服务提供商和 AI 供应商的基础设施成本增加。为此,我们开发了智能流媒体框架 ISLE,以解决当前成像基础设施效率低下的问题。我们的框架从视频点播平台中汲取灵感,利用逐行编码技术,以最佳分辨率向人工智能供应商智能流式传输医学影像,以便从单个高分辨率副本中进行推理。我们假设,ISLE 可以显著降低人工智能推理的带宽和计算要求,同时提高吞吐量(即人工智能系统每秒处理的扫描次数)。我们通过流式传输胸部 X 光片进行分类,通过流式传输腹部 CT 扫描进行肝脏和脾脏分割,并与每个数据集的原始版本进行比较,以此评估我们的框架。结果显示,在分类方面,ISLE 将数据传输和解码时间分别减少了至少 92% 和 88%,同时将吞吐量提高了 3.72 倍以上。在两个分割任务中,ISLE 将数据传输和解码时间分别减少了至少 82% 和 88%,同时将吞吐量提高了 2.9 倍以上。在所有三个任务中,ISLE 流数据对人工智能系统的诊断性能都没有影响(所有 P > 0.05)。因此,我们的研究结果表明,我们的框架可以通过提高临床环境中人工智能部署的数据和计算效率来解决当前成像基础设施效率低下的问题,而不会影响使用人工智能系统的临床决策。
ISLE: An Intelligent Streaming Framework for High-Throughput AI Inference in Medical Imaging.
As the adoption of artificial intelligence (AI) systems in radiology grows, the increase in demand for greater bandwidth and computational resources can lead to greater infrastructural costs for healthcare providers and AI vendors. To that end, we developed ISLE, an intelligent streaming framework to address inefficiencies in current imaging infrastructures. Our framework draws inspiration from video-on-demand platforms to intelligently stream medical images to AI vendors at an optimal resolution for inference from a single high-resolution copy using progressive encoding. We hypothesize that ISLE can dramatically reduce the bandwidth and computational requirements for AI inference, while increasing throughput (i.e., the number of scans processed by the AI system per second). We evaluate our framework by streaming chest X-rays for classification and abdomen CT scans for liver and spleen segmentation and comparing them with the original versions of each dataset. For classification, our results show that ISLE reduced data transmission and decoding time by at least 92% and 88%, respectively, while increasing throughput by more than 3.72 × . For both segmentation tasks, ISLE reduced data transmission and decoding time by at least 82% and 88%, respectively, while increasing throughput by more than 2.9 × . In all three tasks, the ISLE streamed data had no impact on the AI system's diagnostic performance (all P > 0.05). Therefore, our results indicate that our framework can address inefficiencies in current imaging infrastructures by improving data and computational efficiency of AI deployments in the clinical environment without impacting clinical decision-making using AI systems.