Abstract

Osteosarcoma is a rare bone cancer which is more common in children than in adults and has a high chance of metastasizing to the patient’s lungs. Due to initiated cases, it is difficult to diagnose and hard to detect the nodule in a lung at the early state. Convolutional Neural Networks (CNNs) are effectively applied for early state detection by considering CT-scanned images. Transferring patients from small hospitals to the cancer specialized hospital, Lerdsin Hospital, poses difficulties in information sharing because of the privacy and safety regulations. CD-ROM media was allowed for transferring patients’ data to Lerdsin Hospital. Digital Imaging and Communications in Medicine (DICOM) files cannot be stored on a CD-ROM. DICOM must be converted into other common image formats, such as BMP, JPG and PNG formats. Quality of images can affect the accuracy of the CNN models. In this research, the effect of different image formats is studied and experimented. Three popular medical CNN models, VGG-16, ResNet-50 and MobileNet-V2, are considered and used for osteosarcoma detection. The positive and negative class images are corrected from Lerdsin Hospital, and 80% of all images are used as a training dataset, while the rest are used to validate the trained models. Limited training images are simulated by reducing images in the training dataset. Each model is trained and validated by three different image formats, resulting in 54 testing cases. F1-Score and accuracy are calculated and compared for the models’ performance. VGG-16 is the most robust of all the formats. PNG format is the most preferred image format, followed by BMP and JPG formats, respectively.

Highlights

  • The global bone cancer rate is 0.2% among all types of cancer

  • This research aims to analyze the effectiveness of learning systems from common image file types to detect osteosarcoma based on Convolutional Neural Networks (CNNs)’ models

  • There are three popular computed tomography (CT)-scanned CNN models investigated in this research, which are VGG-16, ResNet-50 and MobileNet-V2 models

Read more

Summary

Introduction

The global bone cancer rate is 0.2% among all types of cancer. 3600 patients were diagnosed with bone cancer and around 1720 patients passed away in the year 2020 [1]. The most common type of bone cancer is osteosarcoma, which comprises 28% of adult and 56% of adolescent bone cancer found [2]. Osteosarcoma is a primary bone malignancy with a high incidence rate in children and adolescents relative to other age groups [3,4]. Within one to two years after surgery, osteosarcoma patients often return with a skinny body and dyspnoea because cancer cells have spread to other organs, especially the lungs. Between 50 and 75% of patients with osteosarcoma will present with clinically detectable metastases from bone to lung [4,5,6], a proportion that has increased with sophisticated methods of detection such as computed tomography (CT)

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call