共 25 条
Multicenter Study on COVID-19 Lung Computed Tomography Segmentation with varying Glass Ground Opacities using Unseen Deep Learning Artificial Intelligence Paradigms: COVLIAS 1.0 Validation
被引:0
|作者:
Jasjit S. Suri
Sushant Agarwal
Luca Saba
Gian Luca Chabert
Alessandro Carriero
Alessio Paschè
Pietro Danna
Armin Mehmedović
Gavino Faa
Tanay Jujaray
Inder M. Singh
Narendra N. Khanna
John R. Laird
Petros P. Sfikakis
Vikas Agarwal
Jagjit S. Teji
Rajanikant R Yadav
Ferenc Nagy
Zsigmond Tamás Kincses
Zoltan Ruzsa
Klaudija Viskovic
Mannudeep K. Kalra
机构:
[1] Stroke Diagnostic and Monitoring Division,Advanced Knowledge Engineering Centre
[2] GBTI,Department of Computer Science Engineering
[3] Pranveer Singh Institute of Technology,Department of Radiology
[4] Azienda Ospedaliero Universitaria (A.O.U.),Depart of Radiology
[5] “Maggiore Della Carità” Hospital,Dept of Molecular, Cell and Developmental Biology
[6] University of Piemonte Orientale,Department of Cardiology
[7] University Hospital for Infectious Diseases,Heart and Vascular Institute
[8] Department of Pathology - AOU of Cagliari,Dept. of Immunology
[9] University of California,Internal Medicine Department
[10] Indraprastha APOLLO Hospitals,Department of Radiology
[11] Adventist Health St. Helena,Invasive Cardiology Division
[12] Rheumatology Unit,Department of Radiology
[13] National Kapodistrian University of Athens,undefined
[14] SGPIMS,undefined
[15] Ann and Robert H. Lurie Children’s Hospital of Chicago,undefined
[16] SGPIMS,undefined
[17] Uttar Pradesh,undefined
[18] University of Szeged,undefined
[19] University of Szeged,undefined
[20] University of Szeged,undefined
[21] Massachusetts General Hospital,undefined
来源:
关键词:
COVID-19;
Lung CT;
Glass ground opacities;
Segmentation;
Hounsfield units;
Solo deep learning;
Hybrid deep learning;
And AI;
D O I:
暂无
中图分类号:
学科分类号:
摘要:
Variations in COVID-19 lesions such as glass ground opacities (GGO), consolidations, and crazy paving can compromise the ability of solo-deep learning (SDL) or hybrid-deep learning (HDL) artificial intelligence (AI) models in predicting automated COVID-19 lung segmentation in Computed Tomography (CT) from unseen data leading to poor clinical manifestations. As the first study of its kind, “COVLIAS 1.0-Unseen” proves two hypotheses, (i) contrast adjustment is vital for AI, and (ii) HDL is superior to SDL. In a multicenter study, 10,000 CT slices were collected from 72 Italian (ITA) patients with low-GGO, and 80 Croatian (CRO) patients with high-GGO. Hounsfield Units (HU) were automatically adjusted to train the AI models and predict from test data, leading to four combinations—two Unseen sets: (i) train-CRO:test-ITA, (ii) train-ITA:test-CRO, and two Seen sets: (iii) train-CRO:test-CRO, (iv) train-ITA:test-ITA. COVILAS used three SDL models: PSPNet, SegNet, UNet and six HDL models: VGG-PSPNet, VGG-SegNet, VGG-UNet, ResNet-PSPNet, ResNet-SegNet, and ResNet-UNet. Two trained, blinded senior radiologists conducted ground truth annotations. Five types of performance metrics were used to validate COVLIAS 1.0-Unseen which was further benchmarked against MedSeg, an open-source web-based system. After HU adjustment for DS and JI, HDL (Unseen AI) > SDL (Unseen AI) by 4% and 5%, respectively. For CC, HDL (Unseen AI) > SDL (Unseen AI) by 6%. The COVLIAS-MedSeg difference was < 5%, meeting regulatory guidelines.Unseen AI was successfully demonstrated using automated HU adjustment. HDL was found to be superior to SDL.
引用
收藏
相关论文