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首页> 外文期刊>The Veterinary Journal >Use of transfer learning to detect diffuse degenerative hepatic diseases from ultrasound images in dogs: A methodological study
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Use of transfer learning to detect diffuse degenerative hepatic diseases from ultrasound images in dogs: A methodological study

机译:转移学习的使用从狗的超声图像中检测弥漫性退化性肝脏疾病:方法论研究

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摘要

The aim of this methodological study was to develop a deep convolutional neural network (DNN) to detect degenerative hepatic disease from ultrasound images of the liver in dogs and to compare the diagnostic accuracy of the newly developed DNN with that of serum biochemistry and cytology on the same samples, using histopathology as a standard. Dogs with suspected hepatic disease that had no prior history of neoplastic disease, no hepatic nodular pathology, no ascites and ultrasonography performed 24h prior to death were included in the study (n = 52). Ultrasonography and serum biochemistry were performed as part of the routine clinical evaluation. On the basis of histopathology, dogs were categorised as 'normal' (n = 8), or having 'vascular abnormalities'(n = 8), or 'inflammatory'(n = 0), 'neoplastic' (n = 4) or 'degenerative'(n = 32) disease; dogs with 'neoplastic' disease were excluded from further analysis. On cytological evaluation, dogs were categorised as 'normal' (n = 11), or having 'inflammatory' (n = 0), 'neoplastic' (n = 4) or 'degenerative' (n = 37) disease. Dogs were categorised as having 'degenerative' (n = 32) or 'non-degenerative' (n = 16) liver disease for analysis due to the limited sample size. The DNN was developed using a transfer learning methodology on a pre-trained neural network that was retrained and fine-tuned to our data set. The resultant DNN had a high diagnostic accuracy for degenerative liver disease (area under the curve 0,91; sensitivity 100%; specificity 82.8%). Cytology and serum biochemical markers (alanine transaminase and aspartate transaminase) had poor diagnostic accuracy in the detection of degenerative liver disease. The DNN outperformed all the other non-invasive diagnostic tests in the detection of degenerative liver disease. (C) 2018 Elsevier Ltd. All rights reserved.
机译:该方法研究的目的是开发一种深度卷积神经网络(DNN),以检测狗中肝脏超声图像的退行性肝病,并比较新开发的DNN的诊断准确性与血清生物化学和细胞学的诊断准确性相同的样品,使用组织病理学作为标准。患有疑似肝脏疾病的狗患者没有肿瘤疾病的历史,没有肝脏结节病理学,在研究中纳入死亡前24小时进行腹水和超声检查(n = 52)。作为常规临床评估的一部分进行超声检查和血清生物化学。在组织病理学的基础上,将狗分为“正常”(n = 8),或具有“血管异常”(n = 8),或'炎症'(n = 0),'肿瘤'(n = 4)或'退化'(n = 32)疾病;与“肿瘤”疾病的狗被排除在进一步的分析之外。在细胞学评估中,狗分为“正常”(n = 11),或具有“炎症”(n = 0),'肿瘤'(n = 4)或'退化'(n = 37)疾病。由于样品大小有限,狗分为具有“退化”(n = 32)或“不退化的”(n = 16)肝病的肝病。 DNN使用在预先训练的神经网络上使用转移学习方法进行开发,该方法被重新训练和微调到我们的数据集。所得DNN具有高诊断准确性,用于退行性肝病(曲线0.91下方的区域;灵敏度100%;特异性82.8%)。细胞学和血清生物化学标记物(丙氨酸转氨酶和天冬氨酸转氨酶)在检测退行性肝病中具有差的诊断准确性。 DNN在检测退行性肝病中表现出所有其他非侵袭性诊断测试。 (c)2018年elestvier有限公司保留所有权利。

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