Your browser doesn't support javascript.
loading
Machine Learning Automated Detection of Large Vessel Occlusion From Mobile Stroke Unit Computed Tomography Angiography.
Czap, Alexandra L; Bahr-Hosseini, Mersedeh; Singh, Noopur; Yamal, Jose-Miguel; Nour, May; Parker, Stephanie; Kim, Youngran; Restrepo, Lucas; Abdelkhaleq, Rania; Salazar-Marioni, Sergio; Phan, Kenny; Bowry, Ritvij; Rajan, Suja S; Grotta, James C; Saver, Jeffrey L; Giancardo, Luca; Sheth, Sunil A.
Afiliação
  • Czap AL; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Bahr-Hosseini M; Department of Neurology and Comprehensive Stroke Center, UCLA, Los Angeles, CA (M.B.-H., M.N., L.R., J.L.S.).
  • Singh N; Department of Biostatistics and Data Science, School of Public Health, University of Texas Health Sciences Center at Houston (N.S., J.-M.Y.).
  • Yamal JM; Department of Biostatistics and Data Science, School of Public Health, University of Texas Health Sciences Center at Houston (N.S., J.-M.Y.).
  • Nour M; Department of Neurology and Comprehensive Stroke Center, UCLA, Los Angeles, CA (M.B.-H., M.N., L.R., J.L.S.).
  • Parker S; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Kim Y; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Restrepo L; Department of Neurology and Comprehensive Stroke Center, UCLA, Los Angeles, CA (M.B.-H., M.N., L.R., J.L.S.).
  • Abdelkhaleq R; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Salazar-Marioni S; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Phan K; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Bowry R; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
  • Rajan SS; Department of Management, Policy and Community Health, School of Public Health, University of Texas Health Sciences Center at Houston (S.S.R.).
  • Grotta JC; Clinical Innovation and Research Institute, Memorial Hermann Hospial Texas Medical Center, Houston (J.C.G.).
  • Saver JL; Department of Neurology and Comprehensive Stroke Center, UCLA, Los Angeles, CA (M.B.-H., M.N., L.R., J.L.S.).
  • Giancardo L; Center for Precision Health, UTHealth School of Biomedical Informatics, UTHealth McGovern Medical School, Houston, TX (L.G.).
  • Sheth SA; Department of Neurology, UTHealth McGovern Medical School, Houston TX (A.L.C., S.P., Y.K., R.A., S.S.-M., K.P., R.B., S.A.S.).
Stroke ; 53(5): 1651-1656, 2022 05.
Article em En | MEDLINE | ID: mdl-34865511
ABSTRACT

BACKGROUND:

Prehospital automated large vessel occlusion (LVO) detection in Mobile Stroke Units (MSUs) could accelerate identification and treatment of patients with LVO acute ischemic stroke. Here, we evaluate the performance of a machine learning (ML) model on CT angiograms (CTAs) obtained from 2 MSUs to detect LVO.

METHODS:

Patients evaluated on MSUs in Houston and Los Angeles with out-of-hospital CTAs were identified. Anterior circulation LVO was defined as an occlusion of the intracranial internal carotid artery, middle cerebral artery (M1 or M2), or anterior cerebral artery vessels and determined by an expert human reader. A ML model to detect LVO was trained and tested on independent data sets consisting of in-hospital CTAs and then tested on MSU CTA images. Model performance was determined using area under the receiver-operator curve statistics.

RESULTS:

Among 68 patients with out-of-hospital MSU CTAs, 40% had an LVO. The most common occlusion location was the middle cerebral artery M1 segment (59%), followed by the internal carotid artery (30%), and middle cerebral artery M2 (11%). Median time from last known well to CTA imaging was 88.0 (interquartile range, 59.5-196.0) minutes. After training on 870 in-hospital CTAs, the ML model performed well in identifying LVO in a separate in-hospital data set of 441 images with area under receiver-operator curve of 0.84 (95% CI, 0.80-0.87). ML algorithm analysis time was under 1 minute. The performance of the ML model on the MSU CTA images was comparable with area under receiver-operator curve 0.80 (95% CI, 0.71-0.89). There was no significant difference in performance between the Houston and Los Angeles MSU CTA cohorts.

CONCLUSIONS:

In this study of patients evaluated on MSUs in 2 cities, a ML algorithm was able to accurately and rapidly detect LVO using prehospital CTA acquisitions.
Assuntos

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Acidente Vascular Cerebral / AVC Isquêmico Tipo de estudo: Diagnostic_studies Limite: Humans Idioma: En Revista: Stroke Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Assunto principal: Acidente Vascular Cerebral / AVC Isquêmico Tipo de estudo: Diagnostic_studies Limite: Humans Idioma: En Revista: Stroke Ano de publicação: 2022 Tipo de documento: Article