Abstract

The human epidermal growth factor receptor 2 (HER2) gene amplification status is a crucial marker for evaluating clinical therapies of breast or gastric cancer. We propose a deep learning-based pipeline for the detection, localization and classification of interphase nuclei depending on their HER2 gene amplification state in Fluorescence in situ hybridization (FISH) images. Our pipeline combines two RetinaNet-based object localization networks which are trained (1) to detect and classify interphase nuclei into distinct classes normal, low-grade and high-grade and (2) to detect and classify FISH signals into distinct classes HER2 or centromere of chromosome 17 (CEN17). By independently classifying each nucleus twice, the two-step pipeline provides both robustness and interpretability for the automated detection of the HER2 amplification status. The accuracy of our deep learning-based pipeline is on par with that of three pathologists and a set of 57 validation images containing several hundreds of nuclei are accurately classified. The automatic pipeline is a first step towards assisting pathologists in evaluating the HER2 status of tumors using FISH images, for analyzing FISH images in retrospective studies, and for optimizing the documentation of each tumor sample by automatically annotating and reporting of the HER2 gene amplification specificities.

Highlights

  • The human epidermal growth factor receptor 2 (HER2) gene, designated ERBB2 gene for six HER2 genes per nucleus

  • By counting cancers as trastuzumab is effective in and classification of at least 20 interphase nuclei prolonging survival in HER2 positive carcinoma from different areas of the Fluorescence in situ hybridization (FISH) slides a of the gastric and of the gastroesophageal junction[2,11]

  • FISH image samples, we developed a pipeline based on convolutional neural networks (CNN)

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Summary

Material and Methods

The ratiocalculated which serve as guideline for 1 and the ratio-2 (ranging from 0 to 1, classifying the HER2 gene amplification status of respectively) are calculated and indicate the the corresponding tumor sample from which the relative number of low grade nuclei (ratio-1) and FISH image originated from. It can be used high grade nuclei (ratio-2), respectively. A value less than a second which is orders of magnitude greater than 6.0 indicates a high-grade status of faster compared to human visual evaluation and

The nucleus detector detects and classifies nuclei image-wide in a FISH image
References could provide additional classification information
Findings
ImageNet Classification with Deep cancer: correlation of relapse and survival
Full Text
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