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FEEDNet: a feature enhanced encoder-decoder LSTM network for nuclei instance segmentation for histopathological

Gayatri Deshmukh1, Onkar Susladkar1, Dhruv Makwana2

  • 1Vishwakarma Institute of Information Technology, Pune, India.

Physics in Medicine and Biology
|July 29, 2022
PubMed
Summary
This summary is machine-generated.

This study introduces FEEDNet, a deep learning model for accurate cell nuclei segmentation in cancer diagnosis. FEEDNet achieves state-of-the-art performance and offers a smaller model size for edge devices.

Keywords:
AI for medical diagnosiscancer diagnosisdeep neural networkdigital image pathologyencoder-decoder networknuclei instance segmentation

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Area of Science:

  • Computational pathology
  • Medical image analysis
  • Deep learning for cancer diagnosis

Background:

  • Accurate cell nuclei segmentation is crucial for cancer diagnosis using whole slide images (WSIs).
  • Challenges in segmenting nuclei from hematoxylin and eosin (HE) stained WSIs include noise and uneven staining.
  • Existing methods often struggle with preserving location information and handling multi-channel data effectively.

Purpose of the Study:

  • To propose a novel deep learning model, FEEDNet, for accurate nuclei segmentation in HE-stained WSIs.
  • To address the limitations of current segmentation techniques by incorporating feature enhancement and LSTM units.
  • To develop a model suitable for both research and deployment on memory-constrained devices.

Main Methods:

  • Developed FEEDNet, an encoder-decoder network featuring "feature enhancement blocks" (FE-blocks) and LSTM units.
  • FE-blocks preserve pixel intensities by concatenating downsampled images, avoiding pooling layer information loss.
  • Employed a multiclass segmentation approach for datasets with class information to generate improved binary masks.

Main Results:

  • FEEDNet achieved state-of-the-art panoptic quality (PQ) on the CoNSeP and CPM-17 datasets, and the second-best PQ on the Kumar dataset.
  • The model size was significantly reduced from 64.90 MB (32-bit float) to 16.51 MB (INT8 quantization) with minimal performance degradation.
  • Demonstrated generalized class-aware binary segmentation accuracy across multiple datasets.

Conclusions:

  • FEEDNet offers a highly accurate and efficient solution for nuclei segmentation in histopathology.
  • The model's reduced size makes it practical for deployment on edge devices with limited memory.
  • The proposed method advances automated cancer diagnosis through improved image analysis.