Abstract

With significant development of Internet of medical things (IoMT) and cloud-fog-edge computing, medical industry is now involving medical big data to improve quality of service in patient care. Karyotyping refers classifying human chromosomes. However, performing karyotyping task generally requires domain expertise in cytogenetics, long-period experience for high accuracy, and considerable manual efforts. An end-to-end chromosome karyotype analysis system is proposed over medical big data to automatically and accurately perform chromosome related tasks of detection, segmentation, and classification. Facing image data generated and collected by means of edge computing, we firstly utilize visual feature to generate chromosome candidates with Extremal Regions (ER) technology. Due to severe occlusion and cross overlapping, we utilize ring radius transform to cluster pixels with same property to approximate chromosome shapes. To solve the problem of unbalanced and small dataset by covering diverse data patterns, we proposed multidistributed generated advertising network (MD-GAN) to perform data enhancement by generating additional training samples. Afterwards, we fine-tune CNN for chromosome classification task by involving generated and sufficient training images. Through experiments in self-collected datasets, the proposed method achieves high accuracy in tasks of chromosome detection, segmentation, and classification. Moreover, experimental results prove that MD-GAN-based data enhancement contributes to classification results of CNN to a certain extent.

Highlights

  • Medical images and sensor data are most common medical data to know health condition of patients

  • With big progress achieved by Internet of Medical ings (IoMT) [1], medical industry has greatly been improved with a new dimension towards intelligent and complex system based on multiple and multimodal medical data offered by environment of Internet of medical things (IoMT) and edge computing [2, 3]

  • Achieving labeled data from doctors is high in time and money cost, since labeling is an annoying and time-consuming task for doctors. is is the main reason for the usage of multidistributed generated advertising network (MD-GAN) to generate more training samples as data augmentation

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Summary

Introduction

Medical images and sensor data are most common medical data to know health condition of patients. Growing number and complexity of medical data require highly distinguished models to automatically perform identification or diagnosis. Deep learning models are adopted to handle large volume of medical data [4], due to their scalability to process either big data or small size data and significant power to analyze complex IoMT data with highly nonlinear functional system. Based on all these advances in IoMT and deep learning, we aim to offer a case study on how to improve a specific medical application, i.e., chromosome karyotyping. Due to the fact that human usually own 24 categories of chromosomes (including 22 kinds of autosomes and 2 sex chromosomes), karyotyping could be comprehended as the process to identify and classify 24 classes of chromosomes from input cell pictures

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