Deep learning-driven automated mitochondrial segmentation for analysis of complex transmission electron microscopy images.

Journal: Scientific reports
Published Date:

Abstract

Mitochondria are central to cellular energy production and regulation, with their morphology tightly linked to functional performance. Precise analysis of mitochondrial ultrastructure is crucial for understanding cellular bioenergetics and pathology. While transmission electron microscopy (TEM) remains the gold standard for such analyses, traditional manual segmentation methods are time-consuming and prone to error. In this study, we introduce a novel deep learning framework that combines probabilistic interactive segmentation with automated quantification of mitochondrial morphology. Leveraging uncertainty analysis and real-time user feedback, the model achieves comparable segmentation accuracy while reducing analysis time by 90% compared to manual methods. Evaluated on both benchmark Lucchi++ datasets and real-world TEM images of mouse skeletal muscle, the pipeline not only improved efficiency but also identified key pathological differences in mitochondrial morphology between wild-type and mdx mouse models of Duchenne muscular dystrophy. This automated approach offers a powerful, scalable tool for mitochondrial analysis, enabling high-throughput and reproducible insights into cellular function and disease mechanisms.

Authors

  • Chan Jang
    Graduate School of Artificial Intelligence, Ulsan National Institute of Science & Technology, Ulsan, 44919, Republic of Korea.
  • Hojun Lee
    Department of General Surgery, Armed Forces Capital Hospital, Seongnam, Korea.
  • Jaejun Yoo
    Department of Bio and Brain Engineering, Korea Advanced Institute of Science & Technology (KAIST), Daejeon, Republic of Korea.
  • Haejin Yoon
    Department of Biological Sciences, Ulsan National Institute of Science & Technology, Ulsan, 44919, Republic of Korea. haejinyoon@unist.ac.kr.