scholarly journals Development and Validation of a Modified Three-Dimensional U-Net Deep-Learning Model for Automated Detection of Lung Nodules on Chest CT Images From the Lung Image Database Consortium and Japanese Datasets

Author(s):  
Kazuhiro Suzuki ◽  
Yujiro Otsuka ◽  
Yukihiro Nomura ◽  
Kanako K. Kumamaru ◽  
Ryohei Kuwatsuru ◽  
...  
Author(s):  
Mostafa El Habib Daho ◽  
Amin Khouani ◽  
Mohammed El Amine Lazouni ◽  
Sidi Ahmed Mahmoudi

Author(s):  
Yifan Wang ◽  
Chuan Zhou ◽  
Heang-Ping Chan ◽  
Lubomir M. Hadjiiski ◽  
Jun Wei ◽  
...  

2020 ◽  
Author(s):  
Myeongkyun Kang ◽  
Philip Chikontwe ◽  
Miguel Luna ◽  
Kyung Soo Hong ◽  
Jong Geol Jang ◽  
...  

ABSTRACTAs the number of COVID-19 patients has increased worldwide, many efforts have been made to find common patterns in CT images of COVID-19 patients and to confirm the relevance of these patterns against other clinical information. The aim of this paper is to propose a new method that allowed us to find patterns which observed on CTs of patients, and further we use these patterns for disease and severity diagnosis. For the experiment, we performed a retrospective cohort study of 170 confirmed patients with COVID-19 and bacterial pneumonia acquired at Yeungnam University hospital in Daegu, Korea. We extracted lesions inside the lungs from the CT images and classified whether these lesions were from COVID-19 patients or bacterial pneumonia patients by applying a deep learning model. From our experiments, we found 20 patterns that have a major effect on the classification performance of the deep learning model. Crazy-paving was extracted as a major pattern of bacterial pneumonia, while Ground-glass opacities (GGOs) in the peripheral lungs as that of COVID-19. Diffuse GGOs in the central and peripheral lungs was considered to be a key factor for severity classification. The proposed method achieved an accuracy of 91.2% for classifying COVID-19 and bacterial pneumonia with 95% reported for severity classification. Chest CT analysis with constructed lesion clusters revealed well-known COVID-19 CT manifestations comparable to manual CT analysis. Moreover, the constructed patient level histogram with/without radiomics features showed feasibility and improved accuracy for both disease and severity classification with key clinical implications.


2020 ◽  
Vol 10 (1) ◽  
Author(s):  
Sijia Cui ◽  
Shuai Ming ◽  
Yi Lin ◽  
Fanghong Chen ◽  
Qiang Shen ◽  
...  

2021 ◽  
Vol Publish Ahead of Print ◽  
Author(s):  
Yi-Chu Li ◽  
Hung-Hsun Chen ◽  
Henry Horng-Shing Lu ◽  
Hung-Ta Hondar Wu ◽  
Ming-Chau Chang ◽  
...  

Urology ◽  
2020 ◽  
Vol 144 ◽  
pp. 152-157
Author(s):  
Michael Fenstermaker ◽  
Scott A. Tomlins ◽  
Karandeep Singh ◽  
Jenna Wiens ◽  
Todd M. Morgan

Author(s):  
A. Amyar ◽  
R. Modzelewski ◽  
S. Ruan

ABSTRACTThe fast spreading of the novel coronavirus COVID-19 has aroused worldwide interest and concern, and caused more than one million and a half confirmed cases to date. To combat this spread, medical imaging such as computed tomography (CT) images can be used for diagnostic. An automatic detection tools is necessary for helping screening COVID-19 pneumonia using chest CT imaging. In this work, we propose a multitask deep learning model to jointly identify COVID-19 patient and segment COVID-19 lesion from chest CT images. Our motivation is to leverage useful information contained in multiple related tasks to help improve both segmentation and classification performances. Our architecture is composed by an encoder and two decoders for reconstruction and segmentation, and a multi-layer perceptron for classification. The proposed model is evaluated and compared with other image segmentation and classification techniques using a dataset of 1044 patients including 449 patients with COVID-19, 100 normal ones, 98 with lung cancer and 397 of different kinds of pathology. The obtained results show very encouraging performance of our method with a dice coefficient higher than 0.78 for the segmentation and an area under the ROC curve higher than 93% for the classification.


2020 ◽  
Vol 133 ◽  
pp. 210-216 ◽  
Author(s):  
K. Shankar ◽  
Abdul Rahaman Wahab Sait ◽  
Deepak Gupta ◽  
S.K. Lakshmanaprabu ◽  
Ashish Khanna ◽  
...  

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