Augmented Reality Visualization and Interaction for COVID-19 CT-Scan NN Automated Segmentation: A Validation Study

被引:4
作者
Amara, K. [1 ]
Kerdjidj, O. [1 ,2 ]
Guerroudji, Mohamed Amine [1 ]
Zenati, N. [1 ]
Djekoune, O. [1 ]
机构
[1] Ctr Dev Adv Technol CDTA, Algiers 16081, Algeria
[2] Univ Dubai, Coll Engn & Informat Technol, Dubai, U Arab Emirates
关键词
COVID-19; Three-dimensional displays; Medical diagnostic imaging; Image segmentation; Medical services; Augmented reality; Surgery; AR interaction; AR visualization; augmented reality (AR); automated segmentation; coronavirus disease (COVID-19); deep learning; medical imaging; U-Net; CLASSIFICATION;
D O I
10.1109/JSEN.2023.3265997
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Although medical imaging technology has persisted in evolving over the last decades, the techniques and technologies used for analytical and visualization purposes have remained constant. Manual or semiautomatic segmentation is, in many cases, complicated. It requires the intervention of a specialist and is time-consuming, especially during the coronavirus disease (COVID-19) pandemic, which has had devastating medical and economic consequences. Processing and visualizing medical images with advanced techniques represent medical professionals' breakthroughs. This article studies how augmented reality (AR) and artificial intelligence (AI) can transform medical practice during COVID-19 and post-COVID-19 pandemic. Here, we report an AR visualization and interaction platform; it covers the whole process from uploading chest computed tomography (CT)-scan images to automatic segmentation-based deep learning, 3-D reconstruction, 3-D visualization, and manipulation. AR provides a more realistic 3-D visualization system, allowing doctors to effectively interact with the generated 3-D model of segmented lungs and COVID-19 lesions. We use the U-Net neural network (NN) for automated segmentation. The statistical measures obtained using the Dice score, pixel accuracy, sensitivity, G-mean, and specificity are 0.749, 0.949, 0.956, 0.955, and 0.954, respectively. The user-friendliness and usability are objectified by a formal user study that compared our AR-assisted design to the standard diagnosis setup. One hundred and six doctors and medical students, including eight senior medical lecturers, volunteered to assess our platform. The platform could be used as an aid-diagnosis tool to identify and analyze the COVID-19 infectious or as a training tool for residents and medical students. The prototype can be extended to other pulmonary pathologies.
引用
收藏
页码:12114 / 12123
页数:10
相关论文
共 50 条
[41]   Object or Background: An Interpretable Deep Learning Model for COVID-19 Detection from CT-Scan Images [J].
Singh, Gurmail ;
Yow, Kin-Choong .
DIAGNOSTICS, 2021, 11 (09)
[42]   A Novel Automated Classification and Segmentation for COVID-19 using 3D CT Scans [J].
Wang, Shiyi ;
Yang, Guang .
2022 IEEE 5TH INTERNATIONAL CONFERENCE ON IMAGE PROCESSING APPLICATIONS AND SYSTEMS, IPAS, 2022,
[43]   Enhancing COVID-19 CT Image Segmentation: A Comparative Study of Attention and Recurrence in UNet Models [J].
Buongiorno, Rossana ;
Del Corso, Giulio ;
Germanese, Danila ;
Colligiani, Leonardo ;
Python, Lorenzo ;
Romei, Chiara ;
Colantonio, Sara .
JOURNAL OF IMAGING, 2023, 9 (12)
[44]   Deep learning-based important weights-only transfer learning approach for COVID-19 CT-scan classification [J].
Tejalal Choudhary ;
Shubham Gujar ;
Anurag Goswami ;
Vipul Mishra ;
Tapas Badal .
Applied Intelligence, 2023, 53 :7201-7215
[45]   CT-scan findings of COVID-19 pneumonia based on the time elapsed from the beginning of symptoms to the CT imaging evaluation: a descriptive study in Iran [J].
Jafari, Sirous ;
Tabary, Mohammadreza ;
Eshraghi, Sahereh ;
Araghi, Farnaz ;
Aryannejad, Armin ;
Mohammadnejad, Esmaeil ;
Rasoolinejad, Mehrnaz ;
Hajiabdolbaghi, Mahboubeh ;
Koochak, Hamid Emadi ;
Ahmadinejad, Zahra ;
Abbasian, Ladan ;
Manshadi, Seyed Ali Dehghan ;
Salehi, Mohammadreza ;
Khalili, Hossein ;
Yazdi, Niloofar Ayoobi ;
Seifi, Arash .
ROMANIAN JOURNAL OF INTERNAL MEDICINE, 2020, 58 (04) :242-250
[46]   Deep learning-based important weights-only transfer learning approach for COVID-19 CT-scan classification [J].
Choudhary, Tejalal ;
Gujar, Shubham ;
Goswami, Anurag ;
Mishra, Vipul ;
Badal, Tapas .
APPLIED INTELLIGENCE, 2023, 53 (06) :7201-7215
[47]   A deep learning and grad-CAM based color visualization approach for fast detection of COVID-19 cases using chest X-ray and CT-Scan images [J].
Panwar, Harsh ;
Gupta, P. K. ;
Siddiqui, Mohammad Khubeb ;
Morales-Menendez, Ruben ;
Bhardwaj, Prakhar ;
Singh, Vaishnavi .
CHAOS SOLITONS & FRACTALS, 2020, 140
[48]   A quantum-clustering optimization method for COVID-19 CT scan image segmentation [J].
Singh, Pritpal ;
Bose, Surya Sekhar .
EXPERT SYSTEMS WITH APPLICATIONS, 2021, 185 (185)
[49]   Automated detection of COVID-19 from CT scan using convolutional neural network [J].
Mishra, Narendra Kumar ;
Singh, Pushpendra ;
Joshi, Shiv Dutt .
BIOCYBERNETICS AND BIOMEDICAL ENGINEERING, 2021, 41 (02) :572-588
[50]   Amount and distribution of parenchymal abnormalities at CT-scan do not predict awake prone position outcome in Covid-19 [J].
Raimondi, F. ;
Pappacena, S. ;
Novelli, L. ;
Annibali, S. ;
Bianco, I. ;
Malandrino, L. ;
Cazzaniga, S. ;
Brivio, M. ;
Trapasso, R. ;
Bonetti, S. ;
Caglioni, F. ;
Catani, C. ;
Allegri, C. ;
Biza, R. ;
Anelli, M. ;
Di Marco, F. .
EUROPEAN RESPIRATORY JOURNAL, 2022, 60