Machine learning models of ischemia/hemorrhage in moyamoya disease and analysis of its risk factors

被引:5
|
作者
Chen, Zhongjun [1 ,3 ]
Luo, Haowen [2 ]
Xu, Lijun [1 ]
机构
[1] Nanchang Univ, Affiliated Hosp 2, Dept Neurol, Nanchang 330006, Jiangxi, Peoples R China
[2] Nanchang Univ, Affiliated Hosp 2, Med Big Data Ctr, Nanchang 330006, Jiangxi, Peoples R China
[3] Shangrao Peoples Hosp, Dept Neurol, Shangrao 334000, Jiangxi, Peoples R China
关键词
LR; XGboost; SVM; Model; MMD; CLINICAL-FEATURES;
D O I
10.1016/j.clineuro.2021.106919
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
Object: This study aimed to determine the risk factors of ischemic/hemorrhagic stroke in patients suffering moyamoya disease (MMD), as well as to compare the effects of six analysis methods. Methods: In the present retrospective study, the data originated from the database of Jiang Xi Province Medical Big Data Engineering & Technology Research Center. In addition, the information of patients with MMD that were admitted to the second affiliated hospital of Nanchang university from January 1st, 2012 to December 31st, 2019 was acquired. Six different machine learning methods were adopted to build the models, and XGboost, Logistic regression (LR) and Support vector machine (SVM) models were adopted to determine the risk factors of ischemic/hemorrhagic stroke in patients with MMD because of their excellent performance. Next, the effects of the built models were compared and validated in internal and independent external validation sets. The external validation set involving 204 cases from January 1st, 2018 to December 31st, 2019. Result: On the whole, 790 patients with MMD were screened, i.e., 397 patients with cerebral infarction and 393 patients with cerebral hemorrhage. In the internal validation set, XGboost model exhibited significant discrimination (AUC>0.75), with its area under the curve (AUC) reaching 0.874 (95% CI: 0.859, 0.889). Compared with the LR and SVM models, the XGboost model in the internal validation set achieved the improved accuracy by 3.2% and 3.1%, respectively, whereas no significant difference was identified. Conclusion: XGboost model could be more efficient in analyzing the risk factors of ischemic/hemorrhagic stroke in patients with MMD; the risk factors of hemorrhagic stroke in MMD might be closely related to Suzuki stages, presence of an aneurysm, rural residence, hospitalization times and age of onset.
引用
收藏
页数:8
相关论文
共 50 条
  • [21] Predicting the risk of nodular thyroid disease in coal miners based on different machine learning models
    Zhao, Feng
    Zhang, Hongzhen
    Cheng, Danqing
    Wang, Wenping
    Li, Yongtian
    Wang, Yisong
    Lu, Dekun
    Dong, Chunhui
    Ren, Dingfei
    Yang, Lixin
    FRONTIERS IN MEDICINE, 2022, 9
  • [22] Identification of moyamoya disease based on cerebral oxygen saturation signals using machine learning methods
    Gao, Tianxin
    Zou, Chuyue
    Li, Jinyu
    Han, Cong
    Zhang, Houdi
    Li, Yue
    Tang, Xiaoying
    Fan, Yingwei
    JOURNAL OF BIOPHOTONICS, 2022, 15 (07)
  • [23] Postoperative Cerebral Infarction Risk Factors and Postoperative Management of Pediatric Patients with Moyamoya Disease
    Muraoka, Shinsuke
    Araki, Yoshio
    Kondo, Goro
    Kurimoto, Michihiro
    Shiba, Yoshiki
    Uda, Kenji
    Ota, Shinji
    Okamoto, Sho
    Wakabayashi, Toshihiko
    WORLD NEUROSURGERY, 2018, 113 : E190 - E199
  • [24] Cardiac Disease Analysis Using Machine Learning
    Mohandas, R.
    Akinapalli, Maniteja
    Chiluveru, Deepak
    Madadi, Sainath
    JOURNAL OF PHARMACEUTICAL NEGATIVE RESULTS, 2022, 13 : 1569 - 1574
  • [25] Machine learning based prediction models for analyzing risk factors in patients with acute abdominal pain: a retrospective study
    Gan, Tian
    Liu, Xiaochao
    Liu, Rong
    Huang, Jing
    Liu, Dingxi
    Tu, Wenfei
    Song, Jiao
    Cai, Pengli
    Shen, Hexiao
    Wang, Wei
    FRONTIERS IN MEDICINE, 2024, 11
  • [26] Factors affecting topographic thresholds in gully erosion occurrence and its management using predictive machine learning models
    Valipour, Mahdieh
    Mohseni, Neda
    Hosseinzadeh, Seyed Reza
    EARTH SCIENCES RESEARCH JOURNAL, 2021, 25 (04) : 423 - 432
  • [27] Machine learning analysis of multispectral imaging and clinical risk factors to predict amputation wound healing
    Squiers, John J.
    Thatcher, Jeffrey E.
    Bastawros, David S.
    Applewhite, Andrew J.
    Baxter, Ronald D.
    Yi, Faliu
    Quan, Peiran
    Yu, Shuai
    DiMaio, J. Michael
    Gable, Dennis R.
    JOURNAL OF VASCULAR SURGERY, 2022, 75 (01) : 279 - 285
  • [28] Risk Factors of Transient Neurological Deficits and Perioperative Stroke after Revascularization in Patients with Moyamoya Disease
    Zhang, Xincheng
    Yang, Yiping
    Gan, Chao
    He, Xuejun
    Liu, Yanchao
    Huang, Yimin
    Ma, Xiaopeng
    Wang, Sheng
    Shu, Kai
    Lei, Ting
    Zhang, Huaqiu
    BRAIN SCIENCES, 2022, 12 (10)
  • [29] Risk factors of rupture and mortality for intracranial aneurysms associated with moyamoya disease: a multicenter retrospective study
    Zhang, Hengrui
    Lu, Wenpeng
    Liang, Jun
    Wang, Hongping
    Zhao, Yan
    Yang, Xinyu
    Feng, Lei
    Li, Mu
    NEUROLOGICAL SCIENCES, 2024, 45 (05) : 2137 - 2147
  • [30] Risk Factors for Cerebral Hyperperfusion Syndrome After Combined Revascularization in Adult Patients with Moyamoya Disease
    Xu, Dongxiao
    Guo, Jiaojiao
    Zheng, Bingjie
    Wu, Qiaowei
    Gareev, Ilgiz
    Beylerli, Ozal
    Beilerli, Aferin
    Shi, Huaizhang
    CURRENT NEUROVASCULAR RESEARCH, 2023, 20 (05) : 623 - 629