Abstract
Abstract WP180: Novel Machine Learning Model for Prediction of Futile Recanalization in Acute Ischemic Stroke Patients With Anterior Circulation Large Vessel Occlusion
Stroke (1970), Vol.55(Suppl_1)
02/2024
DOI: 10.1161/str.55.suppl_1.WP180
Abstract
Abstract only Introduction: Up to 50% of acute ischemic stroke (AIS) patients who undergo successful mechanical thrombectomy (MT) fail to achieve favorable outcomes (futile recanalization). In this study we aim to develop a machine learning (ML) model to predict futile recanalization (FR) in AIS patients who undergo MT. Methods: We used data from an ongoing large, multicenter database from 2013 to 2023. We included AIS patients treated with MT for ICA, M1, or M2 occlusion with successful recanalization (modified Thrombolysis in Cerebral Infarction [mTICI] score ≥ 2C) and procedure durations under 60 minutes. FR was defined as successful recanalization with 90-day modified Rankin Scale (mRS) 3-6. The dataset was divided into 75% for training and 25% for external validation. Using the Caret Package in R, multiple models were tested, and their performances were evaluated by the area under the curve (AUC) of receiver operating. Both baseline and pre-interventional characteristics were incorporated into the model. The selected model was then externally validated on a 25% validation dataset. Results: Among 2,546 qualified patients, FR occurred in 1,342 (52.7%). In univariate analysis, baseline characteristics were significantly different between FR and non-FR groups. The M5P model demonstrated the highest performance (AUC: 0.833; 95% CI: 0.7989-0.852; PPV: 0.8101) in comparison to other tested models such as logistic regression (AUC: 0.74), RF (AUC: 0.78), J48 (AUC: 0.78), SVM (AUC: 0.79), and GB (AUC: 0.79). The external validation of the model showed satisfactory results (AUC: 75.25; 95% CI: 70-80; PPV: 76.87). Conclusion: Utilizing clinical, pre-procedural, and imaging parameters, the M5P model can efficiently predict F) in AIS patients before attempting MT. This tool can assist neurointerventionalists in adequately choosing their MT candidates.
Details
- Title: Subtitle
- Abstract WP180: Novel Machine Learning Model for Prediction of Futile Recanalization in Acute Ischemic Stroke Patients With Anterior Circulation Large Vessel Occlusion
- Creators
- Conor Cunningham - Medical University of South CarolinaYoussef Zohdy - Emory UniversitySameh Samir Elawady - Medical University of South CarolinaHidetoshi Matsukawa - Medical University of South CarolinaMohammad-Mahdi Sowlat - University of South CarolinaKazutaka Uchida - Hyogo UniversitySara Zandpazandi - Medical University of South CarolinaAtakan Orscelik - Medical University of South CarolinaIlko Maier - Nephrologisches Zentrum GoettingenSami Al Kasab - Medical University of South CarolinaPascal M Jabbour - Thomas Jefferson UniversityJoon-Tae Kim - Chonnam National UniversityStacey C Quintero - New England Baptist Hospitalansaar rai - West Virginia UniversityRobert Starke - University of Miami Health SystemMarios Psychogios - University Hospital of BaselEdgar A Samaniego - University of IowaAdam S Arthur - Semmes Murphey FoundationShinichi Yoshimura - Hyogo Medical UniversityHugo Cuellar - Louisiana State University Health Sciences Center ShreveportBrian Howard - Emory UniversityAli M Alawieh - Emory UniversityDaniele G. Romano - Ospedali Riuniti San Giovanni di Dio e Ruggi d'AragonaOmar Tanweer - Baylor College of MedicineJustin Mascitelli - The University of Texas Health Science Center at San AntonioIsabel Fragata - Unidade Local de Saúde de São JoséAdam Polifka - University of FloridaJoshua Osbun - Washington University in St. LouisRoberto Crosa - Administracion de los Servicios de Salud del EstadoCharles C Matouk - Yale UniversityMin S Park - University of VirginiaMichael Levitt - Seattle UniversityWaleed Brinjikji - Mayo Clinic in ArizonaMark Moss - Washington Regional Medical CenterTravis Dumont - University of ArizonaRichard Williamson - Allegheny General HospitalPedro Navia - Hospital Universitario La PazPeter Kan - The University of Texas Medical Branch at GalvestonReade A De Leacy - Mount Saint Vincent UniversityShakeel A Chowdhry - NorthShore University HealthSystemMohamad Ezzeldin - University of HoustonAlejandro M Spiotta - Medical University of South Carolina
- Resource Type
- Abstract
- Publication Details
- Stroke (1970), Vol.55(Suppl_1)
- DOI
- 10.1161/str.55.suppl_1.WP180
- ISSN
- 0039-2499
- eISSN
- 1524-4628
- Language
- English
- Date published
- 02/2024
- Academic Unit
- Neurology; Radiology; Iowa Neuroscience Institute; Neurosurgery
- Record Identifier
- 9984557944002771
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