Abstract

In this paper, we propose an automatic cell counting framework for stimulated Raman scattering (SRS) images, which can assist tumor tissue characteristic analysis, cancer diagnosis, and surgery planning processes. SRS microscopy has promoted tumor diagnosis and surgery by mapping lipids and proteins from fresh specimens and conducting a fast disclose of fundamental diagnostic hallmarks of tumors with a high resolution. However, cell counting from label-free SRS images has been challenging due to the limited contrast of cells and tissue, along with the heterogeneity of tissue morphology and biochemical compositions. To this end, a deep learning-based cell counting scheme is proposed by modifying and applying U-Net, an effective medical image semantic segmentation model that uses a small number of training samples. The distance transform and watershed segmentation algorithms are also implemented to yield the cell instance segmentation and cell counting results. By performing cell counting on SRS images of real human brain tumor specimens, promising cell counting results are obtained with > 98% of area under the curve (AUC) and R = 0.97 in terms of cell counting correlation between SRS and histological images with hematoxylin and eosin (H&E) staining. The proposed cell counting scheme illustrates the possibility and potential of performing cell counting automatically in near real time and encourages the study of applying deep learning techniques in biomedical and pathological image analyses.

Highlights

  • Identification and counting the number of cells is one of the major tasks for biomedical image analyses and medical diagnoses [1]

  • Brain tumor image samples are obtained from Lu et al (2016) [3]

  • This study aims to promote the implementation of artificial intelligence (AI) to biomedical analysis for stimulated Raman scattering (SRS) images

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Summary

Introduction

Identification and counting the number of cells is one of the major tasks for biomedical image analyses and medical diagnoses [1]. Cell density estimation, which can be obtained by counting the number of cells within a certain region of the image, is an essential hallmark feature with a high correlation to medical diagnostic results [2, 3]. An accurate estimation of cell density can promote the diagnosis and grading of tumors, enable a precise definition of tumor biopsy target, facilitate therapeutic decision making, and assist surgical planning [4]. Cell counting is conducted for brain tumors in this research because it is one of the most dangerous and deadliest cancers due to the aggressive and heterogeneous nature, which leads.

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