0 119

Cited 4 times in

Cancer Prediction With Machine Learning of Thrombi From Thrombectomy in Stroke: Multicenter Development and Validation

DC Field Value Language
dc.contributor.author권일-
dc.contributor.author김동준-
dc.contributor.author김병문-
dc.contributor.author김영대-
dc.contributor.author김진권-
dc.contributor.author남효석-
dc.contributor.author박은정-
dc.contributor.author백민렬-
dc.contributor.author유준상-
dc.contributor.author이효원-
dc.date.accessioned2023-11-07T07:57:54Z-
dc.date.available2023-11-07T07:57:54Z-
dc.date.issued2023-08-
dc.identifier.issn0039-2499-
dc.identifier.urihttps://ir.ymlib.yonsei.ac.kr/handle/22282913/196564-
dc.description.abstractBackground: We aimed to develop and validate machine learning models to diagnose patients with ischemic stroke with cancer through the analysis of histopathologic images of thrombi obtained during endovascular thrombectomy. Methods: This was a retrospective study using a prospective multicenter registry which enrolled consecutive patients with acute ischemic stroke from South Korea who underwent endovascular thrombectomy. This study included patients admitted between July 1, 2017 and December 31, 2021 from 6 academic university hospitals. Whole-slide scanning was performed for immunohistochemically stained thrombi. Machine learning models were developed using transfer learning with image slices as input to classify patients into 2 groups: cancer group or other determined cause group. The models were developed and internally validated using thrombi from patients of the primary center, and external validation was conducted in 5 centers. The model was also applied to patients with hidden cancer who were diagnosed with cancer within 1 month of their index stroke. Results: The study included 70 561 images from 182 patients in both internal and external datasets (119 patients in internal and 63 in external). Machine learning models were developed for each immunohistochemical staining using antibodies against platelets, fibrin, and erythrocytes. The platelet model demonstrated consistently high accuracy in classifying patients with cancer, with area under the receiver operating characteristic curve of 0.986 (95% CI, 0.983-0.989) during training, 0.954 (95% CI, 0.937-0.972) during internal validation, and 0.949 (95% CI, 0.891-1.000) during external validation. When applied to patients with occult cancer, the model accurately predicted the presence of cancer with high probabilities ranging from 88.5% to 99.2%. Conclusions: Machine learning models may be used for prediction of cancer as the underlying cause or detection of occult cancer, using platelet-stained immunohistochemical slide images of thrombi obtained during endovascular thrombectomy.-
dc.description.statementOfResponsibilityrestriction-
dc.languageEnglish-
dc.publisherLippincott Williams & Wilkins-
dc.relation.isPartOfSTROKE-
dc.rightsCC BY-NC-ND 2.0 KR-
dc.subject.MESHHumans-
dc.subject.MESHIschemic Stroke* / complications-
dc.subject.MESHMachine Learning-
dc.subject.MESHNeoplasms* / complications-
dc.subject.MESHProspective Studies-
dc.subject.MESHRetrospective Studies-
dc.subject.MESHStroke* / etiology-
dc.subject.MESHThrombectomy / methods-
dc.subject.MESHThrombosis* / pathology-
dc.titleCancer Prediction With Machine Learning of Thrombi From Thrombectomy in Stroke: Multicenter Development and Validation-
dc.typeArticle-
dc.contributor.collegeCollege of Medicine (의과대학)-
dc.contributor.departmentYonsei Biomedical Research Center (연세의생명연구원)-
dc.contributor.googleauthorJoonNyung Heo-
dc.contributor.googleauthorHyungwoo Lee-
dc.contributor.googleauthorYoung Seog-
dc.contributor.googleauthorSungeun Kim-
dc.contributor.googleauthorJang-Hyun Baek-
dc.contributor.googleauthorHyungjong Park-
dc.contributor.googleauthorKwon-Duk Seo-
dc.contributor.googleauthorGyu Sik Kim-
dc.contributor.googleauthorHan-Jin Cho-
dc.contributor.googleauthorMinyoul Baik-
dc.contributor.googleauthorJoonsang Yoo-
dc.contributor.googleauthorJinkwon Kim-
dc.contributor.googleauthorJun Lee-
dc.contributor.googleauthorYoonkyung Chang-
dc.contributor.googleauthorTae-Jin Song-
dc.contributor.googleauthorJung Hwa Seo-
dc.contributor.googleauthorSeong Hwan Ahn-
dc.contributor.googleauthorHeow Won Lee-
dc.contributor.googleauthorIl Kwon-
dc.contributor.googleauthorEunjeong Park-
dc.contributor.googleauthorByung Moon Kim-
dc.contributor.googleauthorDong Joon Kim-
dc.contributor.googleauthorYoung Dae Kim-
dc.contributor.googleauthorHyo Suk Nam-
dc.identifier.doi10.1161/STROKEAHA-
dc.contributor.localIdA00245-
dc.contributor.localIdA00410-
dc.contributor.localIdA00498-
dc.contributor.localIdA00702-
dc.contributor.localIdA01012-
dc.contributor.localIdA01273-
dc.contributor.localIdA05332-
dc.contributor.localIdA05987-
dc.contributor.localIdA02513-
dc.contributor.localIdA06200-
dc.relation.journalcodeJ02690-
dc.identifier.eissn1524-4628-
dc.identifier.pmid37462056-
dc.identifier.urlhttps://www.ahajournals.org/doi/10.1161/STROKEAHA.123.043127?url_ver=Z39.88-2003-
dc.subject.keywordmachine learning-
dc.subject.keywordstroke-
dc.subject.keywordthrombectomy-
dc.contributor.alternativeNameKwon, Il-
dc.contributor.affiliatedAuthor권일-
dc.contributor.affiliatedAuthor김동준-
dc.contributor.affiliatedAuthor김병문-
dc.contributor.affiliatedAuthor김영대-
dc.contributor.affiliatedAuthor김진권-
dc.contributor.affiliatedAuthor남효석-
dc.contributor.affiliatedAuthor박은정-
dc.contributor.affiliatedAuthor백민렬-
dc.contributor.affiliatedAuthor유준상-
dc.contributor.affiliatedAuthor이효원-
dc.citation.volume54-
dc.citation.number8-
dc.citation.startPage2105-
dc.citation.endPage2113-
dc.identifier.bibliographicCitationSTROKE, Vol.54(8) : 2105-2113, 2023-08-
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Neurology (신경과학교실) > 1. Journal Papers
1. College of Medicine (의과대학) > Dept. of Radiology (영상의학교실) > 1. Journal Papers
1. College of Medicine (의과대학) > Yonsei Biomedical Research Center (연세의생명연구원) > 1. Journal Papers

qrcode

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.