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Can Deep Learning Detect Esophageal Lesions In PET-CT Scans?

机译:深度学习能否在PET-CT扫描中检测到食道病变?

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PET-CT scans using 18F-FDG with a co-registered CT scan are increasingly used to detect cancer. This paper compares deep learning-based lesion detection tools trained on PET, CT and combined modality data. 486 pre-contoured scans were used from a retrospective cohort study into esophageal cancer. Scans were partitioned into training, validation and test sets with an 80:10:10 ratio. 1000 image segments were generated from each scan, with tumor present segments located on the contoured lesion and tumor absent segments distributed randomly within the patient but excluding the tumor. PET and CT image segments were used to train a separate dedicated 5-layer convolutional neural networks (CNN). Testing on segments from unseen scans resulted in an accuracy of greater than 95% for the PET data, and greater than 90% for CT data.
机译:PET-CT扫描使用 18 具有共同注册的CT扫描功能的F-FDG越来越多地用于检测癌症。本文比较了在PET,CT和组合模态数据上训练的基于深度学习的病变检测工具。一项回顾性队列研究对食管癌进行了486次轮廓扫描。将扫描分为比例为80:10:10的训练,验证和测试集。每次扫描产生1000个图像段,肿瘤存在段位于轮廓病变上,而肿瘤不存在段随机分布在患者体内,但不包括肿瘤。 PET和CT图像片段用于训练单独的专用5层卷积神经网络(CNN)。对看不见的扫描进行分段测试,PET数据的准确度大于95%,CT数据的准确度大于90%。

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