Title of article :
Automatic Segmentation of Pathological Glomerular Basement Membrane in Transmission Electron Microscopy Images with Random Forest Stacks
Author/Authors :
Cao, Lei School of Biomedical Engineering - Southern Medical University - GuangZhou, China , Lu, YanMeng Southern Medical University - GuangZhou, China , Li, ChuangQuan School of Biomedical Engineering - Southern Medical University - GuangZhou, China , Yang, Wei School of Biomedical Engineering - Southern Medical University - GuangZhou, China
Abstract :
Pathological classification through transmission electron microscopy (TEM) is essential for the diagnosis of certain nephropathy,
and the changes of thickness in glomerular basement membrane (GBM) and presence of immune complex deposits in GBM are
often used as diagnostic criteria. *e automatic segmentation of the GBM on TEM images by computerized technology can
provide clinicians with clear information about glomerular ultrastructural lesions. The GBM region on the TEM image is not only
complicated and changeable in shape but also has a low contrast and wide distribution of grayscale. Consequently, extracting
image features and obtaining excellent segmentation results are difficult. To address this problem, we introduce a random forest-
(RF-) based machine learning method, namely, RF stacks (RFS), to realize automatic segmentation. Specifically, this work
proposes a two-level integrated RFS that is more complicated than a one-level integrated RF to improve accuracy and generalization performance. The integrated strategies include training integration and testing integration. Training integration can
derive a full-view RFS1 by simultaneously sampling several images of different grayscale ranges in the train phase. Testing
integration can derive a zoom-view RFS2 by separately sampling the images of different grayscale ranges and integrating the
results in the test phase. Experimental results illustrate that the proposed RFS can be used to automatically segment different
morphologies and gray-level basement membranes. Future study on GBM thickness measurement and deposit identification will
be based on this work.
Keywords :
Microscopy , Glomerular , Transmission , Stacks , TEM
Journal title :
Computational and Mathematical Methods in Medicine