Distinguishing novel coronavirus influenza A virus pneumonia with CT radiomics and clinical features

被引:0
作者
Sui, Lianyu [1 ,4 ]
Meng, Huan [1 ,4 ]
Wang, Jianing [1 ,4 ]
Yang, Wei [2 ]
Yang, Lulu [1 ]
Chen, Xudan [2 ]
Zhuo, Liyong [1 ,4 ]
Xing, Lihong [1 ,4 ]
Zhang, Yu [1 ,4 ]
Cui, Jingjing [3 ]
Yin, Xiaoping [1 ,4 ]
机构
[1] Hebei Univ, Affiliated Hosp, Dept Radiol, Clin Med Sch, Baoding 071000, Peoples R China
[2] Baoding First Cent Hosp, Baoding 071000, Peoples R China
[3] United Imaging Intelligence Beijing Co Ltd, Yongteng North Rd, Beijing 100094, Peoples R China
[4] Hebei Key Lab Precise Imaging Inflammat Related Tu, Baoding 071000, Peoples R China
基金
国家重点研发计划;
关键词
Novel coronavirus pneumonia (NCP); Influenza A virus (IAV) pulmonary infection; Computed tomography (CT); Radiomics; Machine learning; COVID-19;
D O I
10.1186/s40537-024-01031-3
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
ObjectivesTo differentiate novel coronavirus pneumonia (NCP) with influenza A virus (IAV) pulmonary infection based on computed tomography (CT) radiomics features combined with clinical feature.MethodsA total of 292 patients were enrolled, as NCP determined with reverse-transcription polymerase chain reaction (RT-PCR) and abnormal chest CT findings and IAV pulmonary infection confirmed by nucleic acid test with pneumonia lesion in the chest CT, retrospectively. The dataset was randomly divided into 233 cases in the training set and 59 cases in the validation set according to the ratio of 8:2, and there were 107 cases collected for verification as external test set. Firstly, voxel-based gray-level discretization (binWidth = 25) and Z-Score normalization were applied to preprocess the patient's ROI and normalize the extracted features. Then, the most predictive radiomic features were selected and their corresponding coefficients were evaluated using the correlation coefficient algorithm and the Least Absolute Shrinkage and Selection Operator (LASSO) algorithm. Subsequently, univariate logistic regression was employed to screen for clinically discriminative features from the patient's clinical characteristics. Finally, constructing the radiomics model and clinical model using support vector machines and logistic regression methods, respectively. And then combining these features of the two to construct a combined model. Receiver operating characteristic curve (ROC), calibration curve, and decision curve were performed to evaluate the classification of the radiomics model, clinical model and combined model. Area under ROC curve (AUC) were calculated to evaluate the diagnostic efficiency, and Delong's test was used to compare the AUC between different models.ResultsAge, white blood cells, neutrophils, lymphocytes, and basic diseases reached statistical significance in the training set. After LASSO, 16 optimal radiomics features were retained. In the validation set and external test set, the SVM radiomics model achieved AUCs of 0.818 and 0.808 for automatic classification of NCP and IAV pulmonary infection,; and the clinical classification model shad AUCs were 0.676 and 0.669; finally, the 5 clinical features and the 16 selected radiomics features were used to construct the combined model with the AUCs of 0.821 and 0.820. After incorporating clinical features, the clinical model's discriminatory and predictive efficacy further improved in testing sets (AUC, 0.669 vs. 0.820, P = 0.002). The combined model performed well for differentiating the NCP and IAV pulmonary infection, and the calibration curves showed good agreement and decision curves indicated relatively satisfactory clinical benefits.ConclusionThe proposed combined model is feasible and effective in differentiating the NCP and IAV pulmonary infection, which may be used as a convenient and efficient auxiliary tool for radiologists to diagnose noninvasively based on the imaging structure of CT.
引用
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页数:15
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共 28 条
  • [1] Classification of COVID-19 and Influenza Patients Using Deep Learning
    Aftab, Muhammad
    Amin, Rashid
    Koundal, Deepika
    Aldabbas, Hamza
    Alouffi, Bader
    Iqbal, Zeshan
    [J]. CONTRAST MEDIA & MOLECULAR IMAGING, 2022, 2022
  • [2] Correlation of Chest CT and RT-PCR Testing for Coronavirus Disease 2019 (COVID-19) in China: A Report of 1014 Cases
    Ai, Tao
    Yang, Zhenlu
    Hou, Hongyan
    Zhan, Chenao
    Chen, Chong
    Lv, Wenzhi
    Tao, Qian
    Sun, Ziyong
    Xia, Liming
    [J]. RADIOLOGY, 2020, 296 (02) : E32 - E40
  • [3] Performance of Radiologists in Differentiating COVID-19 from Non-COVID-19 Viral Pneumonia at Chest CT
    Bai, Harrison X.
    Hsieh, Ben
    Xiong, Zeng
    Halsey, Kasey
    Choi, Ji Whae
    Tran, Thi My Linh
    Pan, Ian
    Shi, Lin-Bo
    Wang, Dong-Cui
    Mei, Ji
    Jiang, Xiao-Long
    Zeng, Qiu-Hua
    Egglin, Thomas K.
    Hu, Ping-Feng
    Agarwal, Saurabh
    Xie, Fang-Fang
    Li, Sha
    Healey, Terrance
    Atalay, Michael K.
    Liao, Wei-Hua
    [J]. RADIOLOGY, 2020, 296 (02) : E46 - E54
  • [4] Comparison of COVID-19 and influenza characteristics
    Bai, Yu
    Tao, Xiaonan
    [J]. JOURNAL OF ZHEJIANG UNIVERSITY-SCIENCE B, 2021, 22 (02): : 87 - 98
  • [5] Comparison of temporal evolution of computed tomography imaging features in COVID-19 and influenza infections in a multicenter cohort study
    Fischer, Tim
    El Baz, Yassir
    Scanferla, Giulia
    Graf, Nicole
    Waldeck, Frederike
    Kleger, Gian-Reto
    Frauenfelder, Thomas
    Bremerich, Jens
    Kobbe, Sabine Schmidt
    Pagani, Jean-Luc
    Schindera, Sebastian
    Conen, Anna
    Wildermuth, Simon
    Leschka, Sebastian
    Strahm, Carol
    Waelti, Stephan
    Dietrich, Tobias Johannes
    Albrich, Werner C.
    [J]. EUROPEAN JOURNAL OF RADIOLOGY OPEN, 2022, 9
  • [6] Exploring the Synergistic Potential of Radiomics and Laboratory Biomarkers for Enhanced Identification of Vulnerable COVID-19 Patients
    Gerhards, Catharina
    Haselmann, Verena
    Schaible, Samuel F.
    Ast, Volker
    Kittel, Maximilian
    Thiel, Manfred
    Hertel, Alexander
    Schoenberg, Stefan O.
    Neumaier, Michael
    Froelich, Matthias F.
    [J]. MICROORGANISMS, 2023, 11 (07)
  • [7] Computing infection distributions and longitudinal evolution patterns in lung CT images
    Gu, Dongdong
    Chen, Liyun
    Shan, Fei
    Xia, Liming
    Liu, Jun
    Mo, Zhanhao
    Yan, Fuhua
    Song, Bin
    Gao, Yaozong
    Cao, Xiaohuan
    Chen, Yanbo
    Shao, Ying
    Han, Miaofei
    Wang, Bin
    Liu, Guocai
    Wang, Qian
    Shi, Feng
    Shen, Dinggang
    Xue, Zhong
    [J]. BMC MEDICAL IMAGING, 2021, 21 (01)
  • [8] Criteria for the translation of radiomics into clinically useful tests
    Huang, Erich P.
    O'Connor, James P. B.
    McShane, Lisa M.
    Giger, Maryellen L.
    Lambin, Philippe
    Kinahan, Paul E.
    Siegel, Eliot L.
    Shankar, Lalitha K.
    [J]. NATURE REVIEWS CLINICAL ONCOLOGY, 2023, 20 (02) : 69 - 82
  • [9] CT-based radiomics combined with signs: a valuable tool to help radiologist discriminate COVID-19 and influenza pneumonia
    Huang, Yilong
    Zhang, Zhenguang
    Liu, Siyun
    Li, Xiang
    Yang, Yunhui
    Ma, Jiyao
    Li, Zhipeng
    Zhou, Jialong
    Jiang, Yuanming
    He, Bo
    [J]. BMC MEDICAL IMAGING, 2021, 21 (01)
  • [10] Radiographic and CT Features of Viral Pneumonia
    Koo, Hyun Jung
    Lim, Soyeoun
    Choe, Jooae
    Choi, Sang-Ho
    Sung, Heungsup
    Do, Kyung-Hyun
    [J]. RADIOGRAPHICS, 2018, 38 (03) : 719 - 739