Prediction of early hematoma expansion of spontaneous intracerebral hemorrhage based on deep learning radiomics features of noncontrast computed tomography

被引:11
|
作者
Feng, Changfeng [1 ,2 ]
Ding, Zhongxiang [1 ]
Lao, Qun [2 ]
Zhen, Tao [1 ]
Ruan, Mei [1 ]
Han, Jing [3 ]
He, Linyang [4 ]
Shen, Qijun [1 ]
机构
[1] Zhejiang Univ, Affiliated Hangzhou Peoples Hosp 1, Dept Radiol, Sch Med, 261 Huansha Rd, Hangzhou, Zhejiang, Peoples R China
[2] Hangzhou Childrens Hosp, Dept Radiol, Hangzhou, Zhejiang, Peoples R China
[3] Zhejiang Kangjing Hosp, Dept Radiol, Hangzhou, Zhejiang, Peoples R China
[4] Hangzhou Jianpei Technol Co Ltd, Hangzhou, Zhejiang, Peoples R China
关键词
Deep learning; Machine learning; Tomography (X-ray computed); Cerebral hemorrhage; SPOT SIGN; EVACUATION;
D O I
10.1007/s00330-023-10410-y
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
ObjectivesAimed to develop a nomogram model based on deep learning features and radiomics features for the prediction of early hematoma expansion.MethodsA total of 561 cases of spontaneous intracerebral hemorrhage (sICH) with baseline Noncontrast Computed Tomography (NCCT) were included. The metrics of hematoma detection were evaluated by Intersection over Union (IoU), Dice coefficient (Dice), and accuracy (ACC). The semantic features of sICH were judged by EfficientNet-B0 classification model. Radiomics analysis was performed based on the region of interest which was automatically segmented by deep learning. A combined model was constructed in order to predict the early expansion of hematoma using multivariate binary logistic regression, and a nomogram and calibration curve were drawn to verify its predictive efficacy by ROC analysis.ResultsThe accuracy of hematoma detection by segmentation model was 98.2% for IoU greater than 0.6 and 76.5% for IoU greater than 0.8 in the training cohort. In the validation cohort, the accuracy was 86.6% for IoU greater than 0.6 and 70.0% for IoU greater than 0.8. The AUCs of the deep learning model to judge semantic features were 0.95 to 0.99 in the training cohort, while in the validation cohort, the values were 0.71 to 0.83. The deep learning radiomics model showed a better performance with higher AUC in training cohort (0.87), internal validation cohort (0.83), and external validation cohort (0.82) than either semantic features or Radscore.ConclusionThe combined model based on deep learning features and radiomics features has certain efficiency for judging the risk grade of hematoma.Clinical relevance statementOur study revealed that the deep learning model can significantly improve the work efficiency of segmentation and semantic feature classification of spontaneous intracerebral hemorrhage. The combined model has a good prediction efficiency for early hematoma expansion.Key Points center dot We employ a deep learning algorithm to perform segmentation and semantic feature classification of spontaneous intracerebral hemorrhage and construct a prediction model for early hematoma expansion.center dot The deep learning radiomics model shows a favorable performance for the prediction of early hematoma expansion.center dot The combined model holds the potential to be used as a tool in judging the risk grade of hematoma.Key Points center dot We employ a deep learning algorithm to perform segmentation and semantic feature classification of spontaneous intracerebral hemorrhage and construct a prediction model for early hematoma expansion.center dot The deep learning radiomics model shows a favorable performance for the prediction of early hematoma expansion.center dot The combined model holds the potential to be used as a tool in judging the risk grade of hematoma.Key Points center dot We employ a deep learning algorithm to perform segmentation and semantic feature classification of spontaneous intracerebral hemorrhage and construct a prediction model for early hematoma expansion.center dot The deep learning radiomics model shows a favorable performance for the prediction of early hematoma expansion.center dot The combined model holds the potential to be used as a tool in judging the risk grade of hematoma.
引用
收藏
页码:2908 / 2920
页数:13
相关论文
共 50 条
  • [21] Application Of Machine Learning Algorithms For Prediction Of Hematoma Expansion In Spontaneous Intracerebral Hemorrhage
    Prologo-Richardson, Paige
    Zoghi, Zeinab
    Castonguay, Alicia
    Khalid, Fatima
    McCracken, Matthew
    Zaidi, Syed F.
    Jumaa, Mouhammad A.
    STROKE, 2023, 54
  • [22] Hematoma Heterogeneity on Noncontrast Computed Tomography Predicts Intracerebral Hematoma Expansion: A Meta-Analysis
    Zhang, Danfeng
    Chen, Jigang
    Guo, Jiaming
    Jiang, Ying
    Dong, Yan
    Chen, Benjamin Ping-Chi
    Wang, Junyu
    Hou, Lijun
    WORLD NEUROSURGERY, 2018, 114 : E663 - E676
  • [23] Accuracy of imaging markers on noncontrast computed tomography in predicting intracerebral hemorrhage expansion
    Cai, Jinxiu
    Zhu, Huachen
    Yang, Dan
    Yang, Rong
    Zhao, Xingquan
    Zhou, Jian
    Gao, Peiyi
    NEUROLOGICAL RESEARCH, 2020, 42 (11) : 973 - 979
  • [24] Black Hole Sign on Noncontrast Computed Tomography in Predicting Hematoma Expansion in Patients with Intracerebral Hemorrhage: A Meta-analysis
    Chen, Yilin
    Tian, Lu
    Wang, Longlun
    Qin, Yong
    Cai, Jinhua
    CURRENT MEDICAL IMAGING, 2020, 16 (07) : 878 - 886
  • [25] Noncontrast Computed Tomography Signs as Predictors of Hematoma Expansion, Clinical Outcome, and Response to Tranexamic Acid in Acute Intracerebral Hemorrhage
    Law, Zhe Kang
    Ali, Azlinawati
    Krishnan, Kailash
    Bischoff, Adam
    Appleton, Jason P.
    Scutt, Polly
    Woodhouse, Lisa
    Pszczolkowski, Stefan
    Cala, Lesley A.
    Dineen, Robert A.
    England, Timothy J.
    Ozturk, Serefnur
    Roffe, Christine
    Bereczki, Daniel
    Ciccone, Alfonso
    Christensen, Hanne
    Ovesen, Christian
    Bath, Philip M.
    Sprigg, Nikola
    STROKE, 2020, 51 (01) : 121 - 128
  • [26] Predictors of early hematoma expansion after spontaneous intracerebral hemorrhage
    Bahnasy, W.
    Rabie, M.
    Ghali, A.
    Helal, H.
    EUROPEAN JOURNAL OF NEUROLOGY, 2020, 27 : 547 - 547
  • [27] Accuracy of Shape Irregularity and Density Heterogeneity on Noncontrast Computed Tomography for Predicting Hematoma Expansion in Spontaneous Intracerebral Hemorrhage: A Systematic Review and Meta-Analysis
    Yu, Zhiyuan
    Zheng, Jun
    Xu, Zhao
    Li, Mou
    Wang, Xiaoze
    Lin, Sen
    Li, Hao
    You, Chao
    WORLD NEUROSURGERY, 2017, 108 : 347 - 355
  • [28] EVOLUTION OF NONCONTRAST COMPUTED TOMOGRAPHY MARKERS OF INTRACEREBRAL HEMORRHAGE EXPANSION AND ITS RELATIONSHIP WITH ACTIVE HEMORRHAGE
    Rodriguez-Luna, D.
    Pancorbo, O.
    Coscojuela, P.
    Simonetti, R.
    Andre Sousa, J.
    Taborda, M. B.
    Rodrigo, M.
    Rizzo, F.
    Olive-Gadea, M.
    Requena, M.
    Garcia-Tornel, A.
    Rodriguez-Villatoro, N.
    Juega, J.
    Muchada, M.
    Pagola, J.
    Rubiera, M.
    Ribo, M.
    Tomasello, A.
    Molina, C.
    INTERNATIONAL JOURNAL OF STROKE, 2023, 18 (03) : 57 - 57
  • [29] Research on predicting hematoma expansion in spontaneous intracerebral hemorrhage based on deep features of the VGG-19 network
    Wu, Fa
    Wang, Peng
    Yang, Huimin
    Wu, Jie
    Liu, Yi
    Yang, Yulin
    Zuo, Zhiwei
    Wu, Tingting
    Li, Jianghao
    POSTGRADUATE MEDICAL JOURNAL, 2024, 100 (1186) : 592 - 602
  • [30] Computed Tomography Angiography Spot Sign, Hematoma Expansion, and Functional Outcome in Spontaneous Cerebellar Intracerebral Hemorrhage
    Singh, Sanjula D.
    Pasi, Marco
    Schreuder, Floris H. B. M.
    Morotti, Andrea
    Senff, Jasper R.
    Warren, Andrew D.
    McKaig, Brenna N.
    Schwab, Kristin
    Gurol, M. Edip
    Rosand, Jonathan
    Greenberg, Steven M.
    Viswanathan, Anand
    Klijn, Catharina J. M.
    Rinkel, Gabriel J. E.
    Goldstein, Joshua N.
    Brouwers, H. Bart
    STROKE, 2021, 52 (09) : 2902 - 2909