Predicting Clinical Outcomes of Large Vessel Occlusion Before Mechanical Thrombectomy Using Machine Learning

  • Hidehisa Nishi
    Form the Department of Neurosurgery (H.N., I.O., M.O., S.M.), Kyoto University Graduate School of Medicine, Kyoto, Japan
  • Naoya Oishi
    Medical Innovation Center (N.O.), Kyoto University Graduate School of Medicine, Kyoto, Japan
  • Akira Ishii
    Department of Neurology (A.I.), Kyoto University Graduate School of Medicine, Kyoto, Japan
  • Isao Ono
    Form the Department of Neurosurgery (H.N., I.O., M.O., S.M.), Kyoto University Graduate School of Medicine, Kyoto, Japan
  • Takenori Ogura
    Department of Neurosurgery, Kokura Memorial Hospital, Kitakyushu, Japan (T.O., H.C., T.H.)
  • Tadashi Sunohara
    Department of Neurosurgery, Kobe City Medical Center General Hospital, Japan (T.S., R.F., H.I., N. Sakai)
  • Hideo Chihara
    Department of Neurosurgery, Kokura Memorial Hospital, Kitakyushu, Japan (T.O., H.C., T.H.)
  • Ryu Fukumitsu
    Department of Neurosurgery, Kobe City Medical Center General Hospital, Japan (T.S., R.F., H.I., N. Sakai)
  • Masakazu Okawa
    Form the Department of Neurosurgery (H.N., I.O., M.O., S.M.), Kyoto University Graduate School of Medicine, Kyoto, Japan
  • Norikazu Yamana
    Department of Neurosurgery, Koseikai Takeda Hospital, Kyoto, Japan (N.Y., N. Sadamasa).
  • Hirotoshi Imamura
    Department of Neurosurgery, Kobe City Medical Center General Hospital, Japan (T.S., R.F., H.I., N. Sakai)
  • Nobutake Sadamasa
    Department of Neurosurgery, Koseikai Takeda Hospital, Kyoto, Japan (N.Y., N. Sadamasa).
  • Taketo Hatano
    Department of Neurosurgery, Kokura Memorial Hospital, Kitakyushu, Japan (T.O., H.C., T.H.)
  • Ichiro Nakahara
    Department of Comprehensive Strokology, Fujita Health University School of Medicine, Toyoake, Japan (I.N.)
  • Nobuyuki Sakai
    Department of Neurosurgery, Kobe City Medical Center General Hospital, Japan (T.S., R.F., H.I., N. Sakai)
  • Susumu Miyamoto
    Form the Department of Neurosurgery (H.N., I.O., M.O., S.M.), Kyoto University Graduate School of Medicine, Kyoto, Japan

説明

<jats:sec> <jats:title>Background and Purpose—</jats:title> <jats:p>The clinical course of acute ischemic stroke with large vessel occlusion (LVO) is a multifactorial process with various prognostic factors. We aimed to model this process with machine learning and predict the long-term clinical outcome of LVO before endovascular treatment and to compare our method with previously developed pretreatment scoring methods.</jats:p> </jats:sec> <jats:sec> <jats:title>Methods—</jats:title> <jats:p>The derivation cohort included 387 LVO patients, and the external validation cohort included 115 LVO patients with anterior circulation who were treated with mechanical thrombectomy. The statistical model with logistic regression without regularization and machine learning algorithms, such as regularized logistic regression, linear support vector machine, and random forest, were used to predict good clinical outcome (modified Rankin Scale score of 0–2 at 90 days) with standard and multiple pretreatment clinical variables. Five previously reported pretreatment scoring methods (the Pittsburgh Response to Endovascular Therapy score, the Stroke Prognostication Using Age and National Institutes of Health Stroke Scale index, the Totaled Health Risks in Vascular Events score, the Houston Intra-Arterial Therapy score, and the Houston Intra-Arterial Therapy 2 score) were compared with these models for the area under the receiver operating characteristic curve.</jats:p> </jats:sec> <jats:sec> <jats:title>Results—</jats:title> <jats:p>The area under the receiver operating characteristic curve of random forest, which was the worst among the machine learning algorithms, was significantly higher than those of the standard statistical model and the best model among the previously reported pretreatment scoring methods in the derivation (the area under the receiver operating characteristic curve were 0.85±0.07 for random forest, 0.78±0.08 for logistic regression without regularization, and 0.77±0.09 for Stroke Prognostication using Age and National Institutes of Health Stroke Scale) and validation cohorts (the area under the receiver operating characteristic curve were 0.87±0.01 for random forest, 0.56±0.07 for logistic regression without regularization, and 0.83±0.00 for Pittsburgh Response to Endovascular Therapy).</jats:p> </jats:sec> <jats:sec> <jats:title>Conclusions—</jats:title> <jats:p>Machine learning methods with multiple pretreatment clinical variables can predict clinical outcomes of patients with anterior circulation LVO who undergo mechanical thrombectomy more accurately than previously developed pretreatment scoring methods.</jats:p> </jats:sec>

収録刊行物

  • Stroke

    Stroke 50 (9), 2379-2388, 2019-09

    Ovid Technologies (Wolters Kluwer Health)

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参考文献 (33)*注記

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