Deep learning PET/CT-based radiomics integrates clinical data: A feasibility study to distinguish between tuberculosis nodules and lung cancer

被引:8
|
作者
Zhang, Xiaolei [1 ,2 ]
Dong, Xianling [2 ,3 ,4 ]
Saripan, M. Iqbal bin [1 ]
Du, Dongyang [5 ,6 ]
Wu, Yanjun [2 ]
Wang, Zhongxiao [2 ]
Cao, Zhendong [7 ]
Wen, Dong [8 ]
Liu, Yanli [2 ]
Marhaban, Mohammad Hamiruce [1 ]
机构
[1] Univ Putra Malaysia, Fac Engn, Serdang, Malaysia
[2] Chengde Med Univ, Dept Biomed Engn, Chengde, Hebei, Peoples R China
[3] Chengde Med Univ, Hebei Int Res Ctr Med Engn, Chengde, Hebei, Peoples R China
[4] Chengde Med Univ, Hebei Prov Key Lab Nerve Injury & Repair, Chengde, Hebei, Peoples R China
[5] Southern Med Univ, Sch Biomed Engn, Guangzhou, Peoples R China
[6] Southern Med Univ, Guangdong Prov Key Lab Med Image Proc, Guangzhou, Peoples R China
[7] Chengde Med Univ, Affiliated Hosp, Dept Radiol, Chengde, Peoples R China
[8] Univ Sci & Technol Beijing, Inst Artificial Intelligence, Beijing, Peoples R China
关键词
clinical data; deep learning; lung cancer; radiomics; tuberculosis nodules; COMPUTER-AIDED DETECTION; PULMONARY TUBERCULOSIS; FDG PET/CT; DIAGNOSIS;
D O I
10.1111/1759-7714.14924
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background: Radiomic diagnosis models generally consider only a single dimension of information, leading to limitations in their diagnostic accuracy and reliability. The integration of multiple dimensions of information into the deep learning model have the potential to improve its diagnostic capabilities. The purpose of study was to evaluate the performance of deep learning model in distinguishing tuberculosis (TB) nodules and lung cancer (LC) based on deep learning features, radiomic features, and clinical information.Methods: Positron emission tomography (PET) and computed tomography (CT) image data from 97 patients with LC and 77 patients with TB nodules were collected. One hundred radiomic features were extracted from both PET and CT imaging using the pyradiomics platform, and 2048 deep learning features were obtained through a residual neural network approach. Four models included traditional machine learning model with radiomic features as input (traditional radiomics), a deep learning model with separate input of image features (deep convolutional neural networks [DCNN]), a deep learning model with two inputs of radiomic features and deep learning features (radiomics-DCNN) and a deep learning model with inputs of radiomic features and deep learning features and clinical information (integrated model). The models were evaluated using area under the curve (AUC), sensitivity, accuracy, specificity, and F1-score metrics.Results: The results of the classification of TB nodules and LC showed that the integrated model achieved an AUC of 0.84 (0.82-0.88), sensitivity of 0.85 (0.80-0.88), and specificity of 0.84 (0.83-0.87), performing better than the other models.Conclusion: The integrated model was found to be the best classification model in the diagnosis of TB nodules and solid LC.
引用
收藏
页码:1802 / 1811
页数:10
相关论文
共 50 条
  • [21] CT-based deep learning radiomics biomarker for programmed cell death ligand 1 expression in non-small cell lung cancer
    Xu, Ting
    Liu, Xiaowen
    Chen, Yaxi
    Wang, Shuxing
    Jiang, Changsi
    Gong, Jingshan
    BMC MEDICAL IMAGING, 2024, 24 (01):
  • [22] Machine learning analysis for the noninvasive prediction of lymphovascular invasion in gastric cancer using PET/CT and enhanced CT-based radiomics and clinical variables
    Fan, Lijing
    Li, Jing
    Zhang, Huiling
    Yin, Hongkun
    Zhang, Rongguo
    Zhang, Jibin
    Chen, Xuejun
    ABDOMINAL RADIOLOGY, 2022, 47 (04) : 1209 - 1222
  • [23] Machine learning analysis for the noninvasive prediction of lymphovascular invasion in gastric cancer using PET/CT and enhanced CT-based radiomics and clinical variables
    Lijing Fan
    Jing Li
    Huiling Zhang
    Hongkun Yin
    Rongguo Zhang
    Jibin Zhang
    Xuejun Chen
    Abdominal Radiology, 2022, 47 : 1209 - 1222
  • [24] Comparison Between Radiomics-Based Machine Learning and Deep Learning Image Classification for Sub-Cm Lung Nodules
    Janzen, I.
    Seyyedi, S.
    Abraham, R.
    Atkar-Khattra, S.
    Mayo, J.
    Yuan, R.
    Myers, R.
    Lam, S.
    Macaulay, C.
    JOURNAL OF THORACIC ONCOLOGY, 2019, 14 (10) : S219 - S220
  • [25] Evaluation of Epidermal Growth Factor Receptor 2 Status in Gastric Cancer by CT-Based Deep Learning Radiomics Nomogram
    Guan, Xiao
    Lu, Na
    Zhang, Jianping
    FRONTIERS IN ONCOLOGY, 2022, 12
  • [26] Non-invasive prediction for pathologic complete response to neoadjuvant chemoimmunotherapy in lung cancer using CT-based deep learning: a multicenter study
    Qu, Wendong
    Chen, Cheng
    Cai, Chuang
    Gong, Ming
    Luo, Qian
    Song, Yongxiang
    Yang, Minglei
    Shi, Min
    FRONTIERS IN IMMUNOLOGY, 2024, 15
  • [27] Development and validation of a preoperative CT-based radiomics nomogram to differentiate tuberculosis granulomas from lung adenocarcinomas: an external validation study
    Yang, Liping
    Jiang, Zhiyun
    Tong, Jinlong
    Li, Nan
    Dong, Qing
    Wang, Kezheng
    BMC CANCER, 2024, 24 (01)
  • [28] Value of 18F-FDG PET/CT-based radiomics model to distinguish the growth patterns of early invasive lung adenocarcinoma manifesting as ground-glass opacity nodules
    Xiaonan Shao
    Rong Niu
    Xiaoliang Shao
    Zhenxing Jiang
    Yuetao Wang
    EJNMMI Research, 10
  • [29] Using stacked deep learning models based on PET/CT images and clinical data to predict EGFR mutations in lung cancer
    Chen, Song
    Han, Xiangjun
    Tian, Guangwei
    Cao, Yu
    Zheng, Xuting
    Li, Xuena
    Li, Yaming
    FRONTIERS IN MEDICINE, 2022, 9
  • [30] CT-based radiomics-deep learning model predicts occult lymph node metastasis in early-stage lung adenocarcinoma patients: A multicenter study
    Yin, Xiaoyan
    Lu, Yao
    Cui, Yongbin
    Zhou, Zichun
    Wen, Junxu
    Huang, Zhaoqin
    Yan, Yuanyuan
    Yu, Jinming
    Meng, Xiangjiao
    CHINESE JOURNAL OF CANCER RESEARCH, 2025, 37 (01)