Semantic Segmentation of Anaemic RBCs Using Multilevel Deep
Convolutional Encoder-Decoder Network
- URL: http://arxiv.org/abs/2202.04650v1
- Date: Wed, 9 Feb 2022 17:31:50 GMT
- Title: Semantic Segmentation of Anaemic RBCs Using Multilevel Deep
Convolutional Encoder-Decoder Network
- Authors: Muhammad Shahzad, Arif Iqbal Umar, Syed Hamad Shirazi, Israr Ahmed
Shaikh
- Abstract summary: We propose a convolutional neural network (CNN) model for semantic segmentation of red blood cells.
The proposed model preserved pixel-level semantic information extracted in one layer and then passed to the next layer to choose relevant features.
This phenomenon helps to precise pixel-level counting of healthy and anaemic-RBC elements along with morphological analysis.
- Score: 2.5398817423053037
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Pixel-level analysis of blood images plays a pivotal role in diagnosing
blood-related diseases, especially Anaemia. These analyses mainly rely on an
accurate diagnosis of morphological deformities like shape, size, and precise
pixel counting. In traditional segmentation approaches, instance or
object-based approaches have been adopted that are not feasible for pixel-level
analysis. The convolutional neural network (CNN) model required a large dataset
with detailed pixel-level information for the semantic segmentation of red
blood cells in the deep learning domain. In current research work, we address
these problems by proposing a multi-level deep convolutional encoder-decoder
network along with two state-of-the-art healthy and Anaemic-RBC datasets. The
proposed multi-level CNN model preserved pixel-level semantic information
extracted in one layer and then passed to the next layer to choose relevant
features. This phenomenon helps to precise pixel-level counting of healthy and
anaemic-RBC elements along with morphological analysis. For experimental
purposes, we proposed two state-of-the-art RBC datasets, i.e., Healthy-RBCs and
Anaemic-RBCs dataset. Each dataset contains 1000 images, ground truth masks,
relevant, complete blood count (CBC), and morphology reports for performance
evaluation. The proposed model results were evaluated using crossmatch analysis
with ground truth mask by finding IoU, individual training, validation, testing
accuracies, and global accuracies using a 05-fold training procedure. This
model got training, validation, and testing accuracies as 0.9856, 0.9760, and
0.9720 on the Healthy-RBC dataset and 0.9736, 0.9696, and 0.9591 on an
Anaemic-RBC dataset. The IoU and BFScore of the proposed model were 0.9311,
0.9138, and 0.9032, 0.8978 on healthy and anaemic datasets, respectively.
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