Detection of Biliary Artesia using Sonographic Gallbladder Images with the help of Deep Learning approaches

A. Obaid, Amina Turki, H. Bellaaj, M. Ksontini
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引用次数: 2

Abstract

BA (Biliary Atresia) is the major cause of both chronic liver illness and the high collective sign of liver transplantation. Connected techniques continue to progress to support the diagnosis of BA and the use of ultrasonography to support projected results after treatment with the KP (Kasai Portoenterostomy). The triangle cord mark, gallbladder anomalies, hilar lymphadenopathy, and the presence of hepatic subcapsular flow are all symptoms that are consistent with BA. However, there are no definite ultrasonography findings for BA. Ultrasound reports, on the other hand, offer a low cost and a real-time evaluation of intra-abdominal tissues. Researchers believe it is difficult to diagnose BA using sonographic gallbladder images without the appropriate skills, especially in rural locations where often experienced sonographers are scarce. To support the diagnosis of BA based on sonographic gallbladder images, a DL (Deep Learning) framework is built. We have applied four types of DL models i.e.VGG16, InceptionV3, ResNet152, and MobileNet, out of which MobileNet performs better with an accuracy of 97.87%, specificity of 97.51%, and a sensitivity of 98.18%. The DL framework in this paper provides a clarification to enable radiologists in advancing the diagnosis of BA in different clinical machine scenarios, particularly in underdeveloped countries and rural areas with limited specialists.
基于深度学习方法的超声胆囊图像检测胆道内窥镜
BA(胆道闭锁)是慢性肝病和肝移植高集体性征象的主要原因。相关技术不断进步,以支持BA的诊断,并使用超声检查来支持KP (Kasai门肠造口术)治疗后的预测结果。三角索痕、胆囊异常、肝门淋巴结病变和肝包膜下血流的存在都是与BA一致的症状。然而,BA没有明确的超声检查结果。另一方面,超声报告提供了对腹腔内组织的低成本和实时评估。研究人员认为,如果没有适当的技能,很难使用超声胆囊图像诊断BA,特别是在缺乏经验丰富的超声医师的农村地区。为了支持基于超声胆囊图像的BA诊断,构建了深度学习(DL)框架。我们应用了vgg16、InceptionV3、ResNet152和MobileNet四种DL模型,其中MobileNet表现较好,准确率为97.87%,特异性为97.51%,灵敏度为98.18%。本文中的DL框架提供了一个澄清,使放射科医生能够在不同的临床机器场景中推进BA的诊断,特别是在专家有限的不发达国家和农村地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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