期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Aortopulmonary window: a case diagnosed and surgery confirmed by ultra-fast computed tomography
1
作者 张希 吴钟凯 +1 位作者 姚尖平 孙培吾 《Chinese Medical Journal》 SCIE CAS CSCD 2004年第11期1750-1752,共3页
关键词 aortopulmonary window · ultra-fast computed tomo graphy · diagnosis · surgical correction
原文传递
Applying Customized Convolutional Neural Network to Kidney Image Volumes for Kidney Disease Detection
2
作者 Ali Altalbe Abdul Rehman Javed 《Computer Systems Science & Engineering》 SCIE EI 2023年第11期2119-2134,共16页
Kidney infection is a severe medical issue affecting individuals worldwide and increasing mortality rates.Chronic Kidney Disease(CKD)is treatable during its initial phases but can become irreversible and cause renal f... Kidney infection is a severe medical issue affecting individuals worldwide and increasing mortality rates.Chronic Kidney Disease(CKD)is treatable during its initial phases but can become irreversible and cause renal failure.Among the various diseases,the most prevalent kidney conditions affecting kidney function are cyst growth,kidney tumors,and nephrolithiasis.The significant challenge for the medical community is the immediate diagnosis and treatment of kidney disease.Kidney failure could result from kidney disorders like tumors,stones,and cysts if not often identified and addressed.Computer-assisted diagnostics are necessary to support clinicians’and specialists’medical assessments due to the rising prevalence of chronic renal illness,the lack of experts,and the rising rates of assessment and monitoring,mainly in developing nations.Artificial Intelligence(AI)approaches such as machine,and deep learning has been used in literature for kidney disease detection;however,they still lack performance.This paper implements a deep learning-based Convolutional Neural Network(CNN)model for the classification and prognosis of kidney disease.We use a benchmark Computed Tomography(CT)kidney dataset for experimentation.The data is pre-processed,and then CNN extracts the features from the images.Results reveal that the proposed approach accurately classifies kidney disease with a considerable accuracy of 0.992%,0.994%precision,0.982%recall,and 0.987%F1-score.This study suggests using the proposed fine-tuned CNN model for kidney disease detection. 展开更多
关键词 Kidney disease convolutional neural network computed tomography feature extraction deep learning machine learning
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部