Enriching the Study Population for Ischemic Stroke Therapeutic Trials Using a Machine Learning Algorithm

被引:2
作者
Maharjan, Jenish [1 ]
Ektefaie, Yasha [1 ]
Ryan, Logan [1 ]
Mataraso, Samson [1 ]
Barnes, Gina [1 ]
Shokouhi, Sepideh [1 ]
Green-Saxena, Abigail [1 ]
Calvert, Jacob [1 ]
Mao, Qingqing [1 ]
Das, Ritankar [1 ]
机构
[1] Dascena Inc, Houston, TX 77080 USA
来源
FRONTIERS IN NEUROLOGY | 2022年 / 12卷
基金
英国科研创新办公室;
关键词
anticoagulant therapy; machine learning; artificial intelligence; clinical trial; stroke prediction; ATRIAL-FIBRILLATION; RISK STRATIFICATION; PREDICTING STROKE; SERUM POTASSIUM; THROMBOLYSIS; ACCURACY; CHADS(2); CODES;
D O I
10.3389/fneur.2021.784250
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
BackgroundStrokes represent a leading cause of mortality globally. The evolution of developing new therapies is subject to safety and efficacy testing in clinical trials, which operate in a limited timeframe. To maximize the impact of these trials, patient cohorts for whom ischemic stroke is likely during that designated timeframe should be identified. Machine learning may improve upon existing candidate identification methods in order to maximize the impact of clinical trials for stroke prevention and treatment and improve patient safety. MethodsA retrospective study was performed using 41,970 qualifying patient encounters with ischemic stroke from inpatient visits recorded from over 700 inpatient and ambulatory care sites. Patient data were extracted from electronic health records and used to train and test a gradient boosted machine learning algorithm (MLA) to predict the patients' risk of experiencing ischemic stroke from the period of 1 day up to 1 year following the patient encounter. The primary outcome of interest was the occurrence of ischemic stroke. ResultsAfter training for optimization, XGBoost obtained a specificity of 0.793, a positive predictive value (PPV) of 0.194, and a negative predictive value (NPV) of 0.985. The MLA further obtained an area under the receiver operating characteristic (AUROC) of 0.88. The Logistic Regression and multilayer perceptron models both achieved AUROCs of 0.862. Among features that significantly impacted the prediction of ischemic stroke were previous stroke history, age, and mean systolic blood pressure. ConclusionMLAs have the potential to more accurately predict the near risk of ischemic stroke within a 1-year prediction window for individuals who have been hospitalized. This risk stratification tool can be used to design clinical trials to test stroke prevention treatments in high-risk populations by identifying subjects who would be more likely to benefit from treatment.
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相关论文
共 63 条
  • [31] Serum Potassium Is Positively Associated With Stroke and Mortality in the Large, Population-Based Malmo Preventive Project Cohort
    Johnson, Linda S.
    Mattsson, Nick
    Sajadieh, Ahmad
    Wollmer, Per
    Soderholm, Martin
    [J]. STROKE, 2017, 48 (11) : 2973 - 2978
  • [32] Stroke Risk as a Function of Atrial Fibrillation Duration and CHA2DS2-VASc Score
    Kaplan, Rachel M.
    Koehler, Jodi
    Ziegler, Paul D.
    Sarkar, Shantanu
    Zweibel, Steven
    Passman, Rod S.
    [J]. CIRCULATION, 2019, 140 (20) : 1639 - 1646
  • [33] Unclear-onset stroke: Daytime-unwitnessed stroke vs. wake-up stroke
    Kim, Yeon-Jung
    Kim, Bum Joon
    Kwon, Sun U.
    Kim, Jong S.
    Kang, Dong-Wha
    [J]. INTERNATIONAL JOURNAL OF STROKE, 2016, 11 (02) : 212 - 220
  • [34] Blood pressure and stroke - An overview of published reviews
    Lawes, CMM
    Bennett, DA
    Feigin, VL
    Rodgers, A
    [J]. STROKE, 2004, 35 (03) : 776 - 785
  • [35] Machine Learning Approach to Identify Stroke Within 4.5 Hours
    Lee, Hyunna
    Lee, Eun-Jae
    Ham, Sungwon
    Lee, Han-Bin
    Lee, Ji Sung
    Kwon, Sun U.
    Kim, Jong S.
    Kim, Namkug
    Kang, Dong-Wha
    [J]. STROKE, 2020, 51 (03) : 860 - 866
  • [36] Using machine learning models to improve stroke risk level classification methods of China national stroke screening
    Li, Xuemeng
    Bian, Di
    Yu, Jinghui
    Li, Mei
    Zhao, Dongsheng
    [J]. BMC MEDICAL INFORMATICS AND DECISION MAKING, 2019, 19 (01)
  • [37] Comparative assessment of published atrial fibrillation stroke risk stratification schemes for predicting stroke, in a non-atrial fibrillation population: The Chin-Shan Community Cohort Study
    Lip, Gregory Y. H.
    Lin, Hung-Ju
    Chien, Kuo-Liong
    Hsu, Hsiu-Ching
    Su, Ta-Chen
    Chen, Ming-Fong
    Lee, Yuan-Teh
    [J]. INTERNATIONAL JOURNAL OF CARDIOLOGY, 2013, 168 (01) : 414 - 419
  • [38] Refining Clinical Risk Stratification for Predicting Stroke and Thromboembolism in Atrial Fibrillation Using a Novel Risk Factor-Based Approach The Euro Heart Survey on Atrial Fibrillation
    Lip, Gregory Y. H.
    Nieuwlaat, Robby
    Pisters, Ron
    Lane, Deirdre A.
    Crijns, Harry J. G. M.
    [J]. CHEST, 2010, 137 (02) : 263 - 272
  • [39] Lundberg SM, 2017, ADV NEUR IN, V30
  • [40] Manuals of Procedures, FRAM HEART STUD