AimSeg: A machine-learning-aided tool for axon, inner tongue and myelin segmentation

被引:1
|
作者
Carrillo-Barbera, Pau [1 ,2 ,3 ,4 ]
Rondelli, Ana Maria [5 ,6 ]
Morante-Redolat, Jose Manuel [1 ,2 ,3 ]
Vernay, Bertrand [5 ,7 ]
Williams, Anna [5 ,6 ]
Bankhead, Peter [4 ,8 ,9 ]
机构
[1] Univ Valencia, Ctr Invest Biomed Red Enfermedades Neurodegenerat, Valencia, Spain
[2] Univ Valencia, Dept Biol Celular Biol Func & Antropol Fis, Valencia, Spain
[3] Univ Valencia, Inst Biotecnol & Biomed BioTecMed, Valencia, Spain
[4] Univ Edinburgh, Inst Genet & Canc, Ctr Genom & Expt Med, Edinburgh, Scotland
[5] Univ Edinburgh, Inst Regenerat & Repair, Ctr Regenerat Med, Edinburgh BioQuarter, Edinburgh, Scotland
[6] Edinburgh BioQuarter, MS Soc Edinburgh Ctr MS Res, Edinburgh, Scotland
[7] Inst Genet & Biol Mol & Cellulaire, CNRS UMR 7104, Inserm U 1258, Ctr Imagerie, Illkirch Graffenstaden, France
[8] Univ Edinburgh, Edinburgh Pathol, Edinburgh, Scotland
[9] Univ Edinburgh, Inst Genet & Canc, CRUK Scotland Ctr, Edinburgh, Scotland
基金
英国医学研究理事会;
关键词
WHITE-MATTER; NERVE-FIBERS; CONDUCTION-VELOCITY; IN-VIVO; IMAGE; MORPHOMETRY; MECHANISMS; SHEATH;
D O I
10.1371/journal.pcbi.1010845
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Electron microscopy (EM) images of axons and their ensheathing myelin from both the central and peripheral nervous system are used for assessing myelin formation, degeneration (demyelination) and regeneration (remyelination). The g-ratio is the gold standard measure of assessing myelin thickness and quality, and traditionally is determined from measurements made manually from EM images-a time-consuming endeavour with limited reproducibility. These measurements have also historically neglected the innermost uncompacted myelin sheath, known as the inner tongue. Nonetheless, the inner tongue has been shown to be important for myelin growth and some studies have reported that certain conditions can elicit its enlargement. Ignoring this fact may bias the standard g-ratio analysis, whereas quantifying the uncompacted myelin has the potential to provide novel insights in the myelin field. In this regard, we have developed AimSeg, a bioimage analysis tool for axon, inner tongue and myelin segmentation. Aided by machine learning classifiers trained on transmission EM (TEM) images of tissue undergoing remyelination, AimSeg can be used either as an automated workflow or as a user-assisted segmentation tool. Validation results on TEM data from both healthy and remyelinating samples show good performance in segmenting all three fibre components, with the assisted segmentation showing the potential for further improvement with minimal user intervention. This results in a considerable reduction in time for analysis compared with manual annotation. AimSeg could also be used to build larger, high quality ground truth datasets to train novel deep learning models. Implemented in Fiji, AimSeg can use machine learning classifiers trained in ilastik. This, combined with a user-friendly interface and the ability to quantify uncompacted myelin, makes AimSeg a unique tool to assess myelin growth. Myelin is formed by specialised cells that wrap themselves around axons and has a major role in the function, protection, and maintenance of nerves. These functions are disturbed by demyelinating diseases, such as multiple sclerosis. In this work we present AimSeg, a new tool based on artificial intelligence algorithms (machine learning) to assess myelin growth from electron microscopy images. Whereas standard metrics and previous computational methods focus on quantifying compact myelin, AimSeg also quantifies the inner myelin tongue (uncompacted myelin). This structure has been largely overlooked despite the fact that it has an important role in the process of myelin growth (both during development and in the adult brain) and recent studies have reported morphological changes associated with some diseases. We report the performance of AimSeg, both as a fully automated approach and in an assisted segmentation workflow that enables the user to curate the results "on-the-fly" while reducing human intervention to the minimum. Therefore, AimSeg stands as a novel bioimage analysis tool that meets the challenges of assessing myelin growth by supporting both standard metrics for myelin evaluation and the quantification of the uncompacted myelin in different conditions.
引用
收藏
页数:21
相关论文
共 50 条
  • [31] Machine-Learning-Aided Massive Hybrid Analog and Digital MIMO DOA Estimation for FutureWireless Networks
    Zhao, Xinyi
    Shi, Baihua
    Bai, Jiatong
    Shu, Feng
    Chen, Yiwen
    Zhan, Xichao
    Cai, Wenlong
    Huang, Mengxing
    Jie, Qijuan
    Li, Yifan
    Wang, Jiangzhou
    You, Xiaohu
    RADIOENGINEERING, 2023, 32 (04) : 634 - 642
  • [32] Machine-learning-aided cognitive reconfiguration for flexible-bandwidth HPC and data center networks [Invited]
    Chen, Xiaoliang
    Proietti, Roberto
    Fariborz, Marjan
    Liu, Che-Yu
    Yoo, S. J. Ben
    JOURNAL OF OPTICAL COMMUNICATIONS AND NETWORKING, 2021, 13 (06) : C10 - C20
  • [33] Machine-learning-aided in silico drug discovery: Machine-learning-based atom parameterization program for molecular mechanics force fields
    Charles, Murchtricia
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 258
  • [34] Machine-Learning-Aided NO2 Discrimination with an Array of Graphene Chemiresistors Covalently Functionalized by Diazonium Chemistry
    Freddi, Sonia
    Gonzalez, Miriam C. Rodriguez
    Casotto, Andrea
    Sangaletti, Luigi
    De Feyter, Steven
    CHEMISTRY-A EUROPEAN JOURNAL, 2023, 29 (60)
  • [35] Machine-Learning-Aided Determination of Post-blast Ore Boundary for Controlling Ore Loss and Dilution
    Yu, Zhi
    Shi, Xiuzhi
    Zhou, Jian
    Gou, Yonggang
    Rao, Dijun
    Huo, Xiaofeng
    NATURAL RESOURCES RESEARCH, 2021, 30 (06) : 4063 - 4078
  • [36] Machine-Learning-Aided Determination of Post-blast Ore Boundary for Controlling Ore Loss and Dilution
    Zhi Yu
    Xiuzhi Shi
    Jian Zhou
    Yonggang Gou
    Dijun Rao
    Xiaofeng Huo
    Natural Resources Research, 2021, 30 : 4063 - 4078
  • [37] Hybrid Intrusion Detection System for Edge-Based IIoT Relying on Machine-Learning-Aided Detection
    Yao, Haipeng
    Gao, Pengcheng
    Zhang, Peiying
    Wang, Jingjing
    Jiang, Chunxiao
    Lu, Lijun
    IEEE NETWORK, 2019, 33 (05): : 75 - 81
  • [38] Machine-learning-aided identification of steroid hormones based on the anisotropic galvanic replacement generated sensor array
    Chen, Yuying
    Lin, Peiru
    Zou, Xun
    Liu, Lina
    Ouyang, Sixue
    Chen, Huiting
    Ren, Qingfan
    Zeng, Ying
    Zhao, Peng
    Tao, Jia
    SENSORS AND ACTUATORS B-CHEMICAL, 2022, 370
  • [39] Machine-learning-aided DFT-1/2 calculations for bandgaps of zinc oxide thin films
    Tseng, Wei-Che
    Kaun, Chao-Cheng
    Su, Yen-Hsun
    THIN SOLID FILMS, 2022, 755
  • [40] Machine-Learning-Aided Quantification of Area Coverage of Adherent Cells from Phase-Contrast Images
    Rosoff, Gal
    Elkabetz, Shir
    Gheber, Levi A.
    MICROSCOPY AND MICROANALYSIS, 2022, 28 (05) : 1712 - 1719