Your browser doesn't support javascript.
loading
Sequence-Type Classification of Brain MRI for Acute Stroke Using a Self-Supervised Machine Learning Algorithm.
Na, Seongwon; Ko, Yousun; Ham, Su Jung; Sung, Yu Sub; Kim, Mi-Hyun; Shin, Youngbin; Jung, Seung Chai; Ju, Chung; Kim, Byung Su; Yoon, Kyoungro; Kim, Kyung Won.
Afiliação
  • Na S; Department of Computer Science and Engineering, Konkuk University, Seoul 05029, Republic of Korea.
  • Ko Y; Biomedical Research Center, Asan Institute for Life Sciences, Asan Medical Center, Seoul 05505, Republic of Korea.
  • Ham SJ; Department of Radiology and Research Institute of Radiology, Asan Medical Center, University of Ulsan College of Medicine, Seoul 05505, Republic of Korea.
  • Sung YS; Department of Radiology and Research Institute of Radiology, Asan Medical Center, University of Ulsan College of Medicine, Seoul 05505, Republic of Korea.
  • Kim MH; Clinical Research Center, Asan Medical Center, Seoul 05505, Republic of Korea.
  • Shin Y; Department of Convergence Medicine, University of Ulsan College of Medicine, Seoul 05505, Republic of Korea.
  • Jung SC; Trialinformatics Inc., Seoul 05505, Republic of Korea.
  • Ju C; Department of Radiation Science & Technology, Jeonbuk National University, Jeonju 56212, Republic of Korea.
  • Kim BS; Biomedical Research Center, Asan Institute for Life Sciences, Asan Medical Center, Seoul 05505, Republic of Korea.
  • Yoon K; Department of Radiology and Research Institute of Radiology, Asan Medical Center, University of Ulsan College of Medicine, Seoul 05505, Republic of Korea.
  • Kim KW; Shin Poong Pharm. Co., Ltd., Seoul 06246, Republic of Korea.
Diagnostics (Basel) ; 14(1)2023 Dec 27.
Article em En | MEDLINE | ID: mdl-38201379
ABSTRACT
We propose a self-supervised machine learning (ML) algorithm for sequence-type classification of brain MRI using a supervisory signal from DICOM metadata (i.e., a rule-based virtual label). A total of 1787 brain MRI datasets were constructed, including 1531 from hospitals and 256 from multi-center trial datasets. The ground truth (GT) was generated by two experienced image analysts and checked by a radiologist. An ML framework called ImageSort-net was developed using various features related to MRI acquisition parameters and used for training virtual labels and ML algorithms derived from rule-based labeling systems that act as labels for supervised learning. For the performance evaluation of ImageSort-net (MLvirtual), we compare and analyze the performances of models trained with human expert labels (MLhumans), using as a test set blank data that the rule-based labeling system failed to infer from each dataset. The performance of ImageSort-net (MLvirtual) was comparable to that of MLhuman (98.5% and 99%, respectively) in terms of overall accuracy when trained with hospital datasets. When trained with a relatively small multi-center trial dataset, the overall accuracy was relatively lower than that of MLhuman (95.6% and 99.4%, respectively). After integrating the two datasets and re-training them, MLvirtual showed higher accuracy than MLvirtual trained only on multi-center datasets (95.6% and 99.7%, respectively). Additionally, the multi-center dataset inference performances after the re-training of MLvirtual and MLhumans were identical (99.7%). Training of ML algorithms based on rule-based virtual labels achieved high accuracy for sequence-type classification of brain MRI and enabled us to build a sustainable self-learning system.
Palavras-chave

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: Diagnostics (Basel) Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Tipo de estudo: Prognostic_studies Idioma: En Revista: Diagnostics (Basel) Ano de publicação: 2023 Tipo de documento: Article