A Multi-Agent Deep Reinforcement Learning Approach for Enhancement of COVID-19 CT Image Segmentation

被引:49
|
作者
Allioui, Hanane [1 ]
Mohammed, Mazin Abed [2 ]
Benameur, Narjes [3 ]
Al-Khateeb, Belal [2 ]
Abdulkareem, Karrar Hameed [4 ]
Garcia-Zapirain, Begonya [5 ]
Damasevicius, Robertas [6 ]
Maskeliunas, Rytis [6 ]
机构
[1] Cadi Ayyad Univ, Fac Sci Semlalia, Comp Sci Dept, Marrakech 40000, Morocco
[2] Univ Anbar, Coll Comp Sci & Informat Technol, Comp Sci Dept, Ramadi 31001, Iraq
[3] Univ Tunis El Manar, Higher Inst Med Technol Tunis, Lab Biophys & Med Technol, Tunis 1006, Tunisia
[4] Al Muthanna Univ, Coll Agr, Samawah 66001, Iraq
[5] Univ Deusto, eVIDA Lab, Bilbao 48007, Spain
[6] Kaunas Univ Technol, Fac Informat, LT-51368 Kaunas, Lithuania
来源
JOURNAL OF PERSONALIZED MEDICINE | 2022年 / 12卷 / 02期
关键词
multi-agent reinforcement learning; COVID-19; segmentation; CT image; mask extraction; semantic segmentation; CLASSIFICATION;
D O I
10.3390/jpm12020309
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Currently, most mask extraction techniques are based on convolutional neural networks (CNNs). However, there are still numerous problems that mask extraction techniques need to solve. Thus, the most advanced methods to deploy artificial intelligence (AI) techniques are necessary. The use of cooperative agents in mask extraction increases the efficiency of automatic image segmentation. Hence, we introduce a new mask extraction method that is based on multi-agent deep reinforcement learning (DRL) to minimize the long-term manual mask extraction and to enhance medical image segmentation frameworks. A DRL-based method is introduced to deal with mask extraction issues. This new method utilizes a modified version of the Deep Q-Network to enable the mask detector to select masks from the image studied. Based on COVID-19 computed tomography (CT) images, we used DRL mask extraction-based techniques to extract visual features of COVID-19 infected areas and provide an accurate clinical diagnosis while optimizing the pathogenic diagnostic test and saving time. We collected CT images of different cases (normal chest CT, pneumonia, typical viral cases, and cases of COVID-19). Experimental validation achieved a precision of 97.12% with a Dice of 80.81%, a sensitivity of 79.97%, a specificity of 99.48%, a precision of 85.21%, an F1 score of 83.01%, a structural metric of 84.38%, and a mean absolute error of 0.86%. Additionally, the results of the visual segmentation clearly reflected the ground truth. The results reveal the proof of principle for using DRL to extract CT masks for an effective diagnosis of COVID-19.
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页数:23
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