AI Article Synopsis

  • Microscopic examination of urinary sediments can be time-consuming and costly, but automated image classification can streamline this process.
  • The study developed an innovative classification model that combines an Arnold Cat Map (ACM) mixer and transfer learning by using a deep learning architecture called DenseNet201, achieving high accuracy in identifying various sediment types.
  • The resulting model demonstrated an impressive 98.52% accuracy, outperforming existing methods and proving its potential for real-world applications in analyzing urine sediments efficiently.

Article Abstract

Microscopic examination of urinary sediments is a common laboratory procedure. Automated image-based classification of urinary sediments can reduce analysis time and costs. Inspired by cryptographic mixing protocols and computer vision, we developed an image classification model that combines a novel Arnold Cat Map (ACM)- and fixed-size patch-based mixer algorithm with transfer learning for deep feature extraction. Our study dataset comprised 6,687 urinary sediment images belonging to seven classes: Cast, Crystal, Epithelia, Epithelial nuclei, Erythrocyte, Leukocyte, and Mycete. The developed model consists of four layers: (1) an ACM-based mixer to generate mixed images from resized 224 × 224 input images using fixed-size 16 × 16 patches; (2) DenseNet201 pre-trained on ImageNet1K to extract 1,920 features from each raw input image, and its six corresponding mixed images were concatenated to form a final feature vector of length 13,440; (3) iterative neighborhood component analysis to select the most discriminative feature vector of optimal length 342, determined using a k-nearest neighbor (kNN)-based loss function calculator; and (4) shallow kNN-based classification with ten-fold cross-validation. Our model achieved 98.52% overall accuracy for seven-class classification, outperforming published models for urinary cell and sediment analysis. We demonstrated the feasibility and accuracy of deep feature engineering using an ACM-based mixer algorithm for image preprocessing combined with pre-trained DenseNet201 for feature extraction. The classification model was both demonstrably accurate and computationally lightweight, making it ready for implementation in real-world image-based urine sediment analysis applications.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10407001PMC
http://dx.doi.org/10.1007/s10278-023-00827-8DOI Listing

Publication Analysis

Top Keywords

classification model
12
deep feature
12
feature extraction
12
image classification
8
urinary sediments
8
mixer algorithm
8
acm-based mixer
8
mixed images
8
feature vector
8
sediment analysis
8

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!