Prediction-Driven Decision Support for Patients With Mild Stroke: A Model Based on Machine Learning Algorithms.

Xinping Lin, Shiteng Lin, XiaoLi Cui, Daizun Zou, FuPing Jiang, JunShan Zhou, NiHong Chen, Zhihong Zhao, Juan Zhang, Jianjun Zou
Author Information
  1. Xinping Lin: School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University, Nanjing, China.
  2. Shiteng Lin: School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University, Nanjing, China.
  3. XiaoLi Cui: Department of Neurology, Nanjing Yuhua Hospital, Yuhua Branch of Nanjing First Hospital, Nanjing Medical University, Nanjing, China.
  4. Daizun Zou: School of Basic Medicine and Clinical Pharmacy, China Pharmaceutical University, Nanjing, China.
  5. FuPing Jiang: Department of Geriatrics, Nanjing First Hospital, Nanjing Medical University, Nanjing, China.
  6. JunShan Zhou: Department of Neurology, Nanjing First Hospital, Nanjing Medical University, Nanjing, China.
  7. NiHong Chen: Department of Neurology, Nanjing First Hospital, Nanjing Medical University, Nanjing, China.
  8. Zhihong Zhao: Department of Neurology, The First Affiliated Hospital (People's Hospital of Hunan Province), Hunan Normal University, Changsha, China.
  9. Juan Zhang: Department of Neurology, Nanjing Yuhua Hospital, Yuhua Branch of Nanjing First Hospital, Nanjing Medical University, Nanjing, China.
  10. Jianjun Zou: Department of Clinical Pharmacology, Nanjing First Hospital, Nanjing Medical University, Nanjing, China.

Abstract

Treatment for mild Stroke remains an open question. We aim to develop a decision support tool based on machine learning (ML) algorithms, called DAMS (Disability After Mild Stroke), to identify mild Stroke patients who would be at high risk of post-Stroke disability (PSD) if they only received medical therapy and, more importantly, to aid neurologists in making individual clinical decisions in emergency contexts. Ischemic Stroke patients were prospectively recorded in the National Advanced Stroke Center of Nanjing First Hospital (China) between July 2016 and September 2020. The exclusion criteria were patients who received thrombolytic therapy, age <18 years, lack of 3-month modified Rankin Scale (mRS), disabled before the index Stroke, with an admission National Institute of Health Stroke scale (NIHSS) > 5. The primary outcome was PSD, corresponding to 3-month mRS ≥ 2. We developed five ML models and assessed the area under curve (AUC) of receiver operating characteristic, calibration curve, and decision curve analysis. The optimal ML model was selected to be DAMS. In addition, SHapley Additive exPlanations (SHAP) approach was introduced to rank the feature importance. Finally, rapid-DAMS (R-DAMS) was constructed for a more urgent situation based on DAMS. A total of 1,905 mild Stroke patients were enrolled in this study, and patients with PSD accounted for 23.4% (447). There was no difference in AUCs between the five models (ranged from 0.691 to 0.823). Although there was similar discriminative performance between ML models, the support vector machine model exhibited higher net benefit and better calibration (Brier score, 0.159, calibration slope, 0.935, calibration intercept, 0.035). Therefore, this model was selected for DAMS. In addition, SHAP approach showed that the most crucial feature was NIHSS on admission. Finally, R-DAMS was constructed and there was similar discriminative performance between R-DAMS and DAMS, but the former performed worse on calibration. DAMS and R-DAMS, as prediction-driven decision support tools, were designed to aid clinical decision-making for mild Stroke patients in emergency contexts. In addition, even within a narrow range of baseline scores, NIHSS on admission is the strongest feature that contributed to the prediction.

Keywords

References

  1. Stroke. 2020 Feb;51(2):440-448 [PMID: 31884906]
  2. Sci Rep. 2019 Sep 10;9(1):13036 [PMID: 31506502]
  3. Stroke. 1997 Jun;28(6):1174-80 [PMID: 9183346]
  4. JAMA. 2018 Jul 10;320(2):156-166 [PMID: 29998337]
  5. J Clin Med. 2021 Mar 20;10(6): [PMID: 33804724]
  6. Neurology. 2019 Aug 13;93(7):e708-e716 [PMID: 31296654]
  7. Neurology. 2001 Apr 24;56(8):1015-20 [PMID: 11320171]
  8. Brain. 2021 Jun 22;144(5):1372-1383 [PMID: 34046670]
  9. Stroke. 2007 Mar;38(3):1091-6 [PMID: 17272767]
  10. Stroke. 2012 Nov;43(11):3018-22 [PMID: 22984013]
  11. J Magn Reson Imaging. 2018 Feb 13;: [PMID: 29437279]
  12. Curr Opin Neurol. 2019 Feb;32(1):13-18 [PMID: 30566411]
  13. Stroke. 2017 Jun;48(6):1688-1690 [PMID: 28438907]
  14. N Engl J Med. 2018 Aug 16;379(7):611-622 [PMID: 29766770]
  15. J Arthroplasty. 2019 Oct;34(10):2272-2277.e1 [PMID: 31327647]
  16. Lancet. 2014 Nov 29;384(9958):1929-35 [PMID: 25106063]
  17. BMJ. 2009 Jun 04;338:b606 [PMID: 19502216]
  18. Stroke. 2012 Feb;43(2):560-2 [PMID: 22052513]
  19. Stroke. 2016 Dec;47(12):2986-2992 [PMID: 27834750]
  20. J Med Chem. 2020 Aug 27;63(16):8761-8777 [PMID: 31512867]
  21. Stroke. 2009 May;40(5):1780-5 [PMID: 19359652]
  22. Stroke. 1993 Jan;24(1):35-41 [PMID: 7678184]
  23. AJNR Am J Neuroradiol. 2010 Aug;31(7):1192-6 [PMID: 20223889]
  24. Stroke. 2019 Dec;50(12):e344-e418 [PMID: 31662037]
  25. Stroke. 2020 May;51(5):1358-1360 [PMID: 32208841]

Word Cloud

Created with Highcharts 10.0.0strokeDAMSpatientsmildcalibration0decisionsupportMLmodelR-DAMSmachinePSDadmissionNIHSSmodelscurveadditionfeaturetoolbasedlearningMildStrokepost-strokedisabilityreceivedtherapyaidclinicalemergencycontextsNational3-monthmRSfiveselectedSHAPapproachFinallyconstructedsimilardiscriminativeperformanceTreatmentremainsopenquestionaimdevelopalgorithmscalledDisabilityidentifyhighriskmedicalimportantlyneurologistsmakingindividualdecisionsIschemicprospectivelyrecordedAdvancedCenterNanjingFirstHospitalChinaJuly2016September2020exclusioncriteriathrombolyticage<18yearslackmodifiedRankinScaledisabledindexInstituteHealthscale>5primaryoutcomecorresponding2developedassessedareaAUCreceiveroperatingcharacteristicanalysisoptimalSHapleyAdditiveexPlanationsintroducedrankimportancerapid-DAMSurgentsituationtotal1905enrolledstudyaccounted234%447differenceAUCsranged691823AlthoughvectorexhibitedhighernetbenefitbetterBrierscore159slope935intercept035Thereforeshowedcrucialformerperformedworseprediction-driventoolsdesigneddecision-makingevenwithinnarrowrangebaselinescoresstrongestcontributedpredictionPrediction-DrivenDecisionSupportPatientsStroke:ModelBasedMachineLearningAlgorithmspredictive

Similar Articles

Cited By (4)