Literature DB >> 30907302

IER-START nomogram for prediction of three-month unfavorable outcome after thrombectomy for stroke.

Manuel Cappellari1, Salvatore Mangiafico2, Valentina Saia3, Giovanni Pracucci4, Sergio Nappini2, Patrizia Nencini4, Daniel Konda5, Fabrizio Sallustio5, Stefano Vallone6, Andrea Zini7, Sandra Bracco8, Rossana Tassi8, Mauro Bergui9, Paolo Cerrato9, Antonio Pitrone10, Francesco Grillo10, Andrea Saletti11, Alessandro De Vito11, Roberto Gasparotti12, Mauro Magoni12, Edoardo Puglielli13, Alfonsina Casalena13, Francesco Causin14, Claudio Baracchini14, Lucio Castellan15, Laura Malfatto15, Roberto Menozzi16, Umberto Scoditti16, Chiara Comelli17, Enrica Duc17, Alessio Comai18, Enrica Franchini18, Mirco Cosottini19, Michelangelo Mancuso19, Simone Peschillo20, Manuela De Michele20, Andrea Giorgianni21, Maria Luisa Delodovici21, Elvis Lafe22, Maria F Denaro23, Nicola Burdi24, Saverio Internò24, Nicola Cavasin25, Adriana Critelli25, Luigi Chiumarulo26, Marco Petruzzellis26, Marco Doddi27, Antonio Carolei27, William Auteri28, Alfredo Petrone28, Riccardo Padolecchia3, Tiziana Tassinari3, Marco Pavia29, Paolo Invernizzi29, Gianni Turcato30, Stefano Forlivesi1, Elisa Francesca Maria Ciceri1, Bruno Bonetti1, Domenico Inzitari4, Danilo Toni20.   

Abstract

BACKGROUND: The applicability of the current models for predicting functional outcome after thrombectomy in strokes with large vessel occlusion (LVO) is affected by a moderate predictive performance. AIMS: We aimed to develop and validate a nomogram with pre- and post-treatment factors for prediction of the probability of unfavorable outcome in patients with anterior and posterior LVO who received bridging therapy or direct thrombectomy <6 h of stroke onset.
METHODS: We conducted a cohort study on patients data collected prospectively in the Italian Endovascular Registry (IER). Unfavorable outcome was defined as three-month modified Rankin Scale (mRS) score 3-6. Six predictors, including NIH Stroke Scale (NIHSS) score, age, pre-stroke mRS score, bridging therapy or direct thrombectomy, grade of recanalization according to the thrombolysis in cerebral ischemia (TICI) grading system, and onset-to-end procedure time were identified a priori by three stroke experts. To generate the IER-START, the pre-established predictors were entered into a logistic regression model. The discriminative performance of the model was assessed by using the area under the receiver operating characteristic curve (AUC-ROC).
RESULTS: A total of 1802 patients with complete data for generating the IER-START was randomly dichotomized into training (n = 1219) and test (n = 583) sets. The AUC-ROC of IER-START was 0.838 (95% confidence interval [CI]): 0.816-0.869) in the training set, and 0.820 (95% CI: 0.786-0.854) in the test set.
CONCLUSIONS: The IER-START nomogram is the first prognostic model developed and validated in the largest population of stroke patients currently candidates to thrombectomy which reliably calculates the probability of three-month unfavorable outcome.

Entities:  

Keywords:  Acute stroke therapy; endovascular treatment; nomogram; outcome; thrombectomy; thrombolysis

Year:  2019        PMID: 30907302     DOI: 10.1177/1747493019837756

Source DB:  PubMed          Journal:  Int J Stroke        ISSN: 1747-4930            Impact factor:   5.266


  5 in total

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  5 in total

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