Amiri Mohammad, Ranjbar Manizheh, Mohammadi Gholamreza Fallah
Assistant Professor, Department of Computer Engineering, Technical and Vocational University, Tehran, Iran.
Lecturer, Department of Computer Engineering, Technical and Vocational University, Tehran, Iran.
J Med Signals Sens. 2023 May 29;13(2):110-117. doi: 10.4103/jmss.jmss_146_21. eCollection 2023 Apr-Jun.
The lung computed tomography (CT) scan contains valuable information and patterns that provide the possibility of early diagnosis of COVID-19 disease as a global pandemic by the image processing software. In this research, based on deep learning of artificial intelligence, the software has been designed that is used clinically to diagnose COVID-19 disease with high accuracy.
Convolutional neural network architecture developed based on Inception-V3 for deep learning of lung image patterns, feature extraction, and image classification. The theory of transfer learning was utilized to increase the learning power of the system. Changes applied in the network layers to increase the detection power. The process of learning was repeated 30 times. All diagnostic statistical parameters of the diagnostic were analyzed to validate the software.
Based on the data of Imam Khomeini Hospital in Sari, the validity, sensitivity, and accuracy of the software in diagnosing of affected to COVID-19 and nonaffected to it were obtained 98%, 98%, and 98%, respectively. Diagnostic statistical parameters on some data were 100%. The modified algorithm of Inception-V3 applied to heterogeneous data also had acceptable precision.
The proposed basic architecture of Inception-v3 utilized for this research has an admissible speed and exactness in learning CT scan images of patients' lungs, and diagnosis of COVID-19 pneumonia, which can be utilized clinically as a powerful diagnostic tool.
肺部计算机断层扫描(CT)包含有价值的信息和模式,通过图像处理软件为作为全球大流行病的COVID-19疾病的早期诊断提供了可能性。在本研究中,基于人工智能的深度学习设计了该软件,其在临床上用于高精度诊断COVID-19疾病。
基于Inception-V3开发卷积神经网络架构,用于肺部图像模式的深度学习、特征提取和图像分类。利用迁移学习理论来提高系统的学习能力。对网络层进行更改以提高检测能力。学习过程重复30次。分析诊断的所有诊断统计参数以验证该软件。
基于萨里伊玛目霍梅尼医院的数据,该软件在诊断COVID-19感染者和未感染者方面的有效性、敏感性和准确性分别为98%、98%和98%。某些数据的诊断统计参数为100%。应用于异构数据的Inception-V3改进算法也具有可接受的精度。
本研究中提出的Inception-v3基本架构在学习患者肺部CT扫描图像以及诊断COVID-19肺炎方面具有可接受的速度和准确性,可在临床上用作强大的诊断工具。