Automated detection of MRI-negative temporal lobe epilepsy with ROI-based morphometric features and machine learning

Lin Yang, Bo Peng, Wei Gao, Rixi A, Yan Liu, Jiawei Liang, Mo Zhu, Haiyang Hu, Zuhong Lu, Chunying Pang, Yakang Dai*, Yu Sun*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

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Abstract

Objective: Temporal lobe epilepsy (TLE) predominantly originates from the anteromedial basal region of the temporal lobe, and its prognosis is generally favorable following surgical intervention. However, TLE often appears negative in magnetic resonance imaging (MRI), making it difficult to quantitatively diagnose the condition solely based on clinical symptoms. There is a pressing need for a quantitative, automated method for detecting TLE.

Methods: This study employed MRI scans and clinical data from 51 retrospective epilepsy cases, dividing them into two groups: 34 patients in TLE group and 17 patients in non-TLE group. The criteria for defining the TLE group were successful surgical removal of the epileptogenic zone in the temporal lobe and a favorable postoperative prognosis. A standard procedure was used for normalization, brain extraction, tissue segmentation, regional brain partitioning, and cortical reconstruction of T1 structural MRI images. Morphometric features such as gray matter volume, cortical thickness, and surface area were extracted from a total of 20 temporal lobe regions in both hemispheres. Support vector machine (SVM), extreme learning machine (ELM), and cmcRVFL+ classifiers were employed for model training and validated using 10-fold cross-validation.

Results: The results demonstrated that employing ELM classifiers in conjunction with specific temporal lobe gray matter volume features led to a better identification of TLE. The classification accuracy was 92.79%, with an area under the curve (AUC) value of 0.8019.

Conclusion: The method proposed in this study can significantly assist in the preoperative identification of TLE patients. By employing this method, TLE can be included in surgical criteria, which could alleviate patient symptoms and improve prognosis, thereby bearing substantial clinical significance.
Original languageEnglish
Article number1323623
Number of pages10
JournalFrontiers in neurology
Volume15
DOIs
Publication statusPublished - 31 Jan 2024

Bibliographical note

Funding:
The author(s) declare financial support was received for the research, authorship, and/or publication of this article. The research reported in this publication was supported by the National Natural Science Foundation of China (62301557, 62271481), the Ministry of Science and Technology (MOST) 2030 Brain Project (2022ZD0208500), Youth Innovation Promotion Association CAS (2021324), Jiangsu Natural Science Foundation (BE2023044, BE2022842, BE2022049, BE2022049-2, BK2021682, BE2021012-5, BE2022049-2), Jiangsu International Cooperation Project (BZ2022028), Jiangsu Province Innovation and Entrepreneurship Team Project, Shandong Natural Science Foundation (ZR2020QF022), Suzhou Science & Technology Foundation (SKY2023056, SKY2022011, SKJY2021035, SKY2021046), Soochow Key Basic Research Special Foundation (SJC2022012), and Medicine and Health Project of Zhejiang Province (2024KY564, 2024KY562).

Keywords

  • temporal lobe epilepsy
  • cortical thickness
  • magnetic resonance imaging
  • gray matter volume
  • machine learning
  • cortical surface area

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