A Comprehensive Study of Applying Object Detection Methods for Medical Image Analysis

Nilay Ganatra
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引用次数: 5

Abstract

Medical imaging is a widely accepted technique for the early detection and diagnosis of disease within digital health. It includes different techniques such as Magnetic resonance imaging (MRI), X-ray, positron emission tomography (PET) scan. Human experts mostly perform the analysis of these images. However, recent advancement in the field of computer-assisted interventions shows the promising results for medical image analysis. With the availability of enormous data, sophisticated algorithms, and high computation power, deep neural networks are highly effective for image analysis and interpretation tasks. Medical image analysis can be performed using the object detection method, where a convolutional neural network (CNN) eliminates the need for manual feature extraction. Object detection using CNN able to extract features directly from images and provides good accuracy. This paper exhibits a detailed survey on applications of different object detection methods available for medical image analysis. This paper discusses the different techniques, state-of-the-art datasets, tools, techniques available, and performance metrics. It also presents the work carried out by various researchers for applying object detection methods for medical image analysis.
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目标检测方法在医学图像分析中的综合应用研究
医学成像是一种被广泛接受的技术,用于早期检测和诊断数字健康中的疾病。它包括不同的技术,如磁共振成像(MRI), x射线,正电子发射断层扫描(PET)扫描。人类专家主要对这些图像进行分析。然而,最近在计算机辅助干预领域的进展显示了医学图像分析的良好结果。由于大量数据的可用性、复杂的算法和高计算能力,深度神经网络在图像分析和解释任务中非常有效。医学图像分析可以使用对象检测方法进行,其中卷积神经网络(CNN)消除了手动特征提取的需要。使用CNN的目标检测能够直接从图像中提取特征,并且提供了很好的精度。本文详细介绍了医学图像分析中不同目标检测方法的应用。本文讨论了不同的技术、最新的数据集、工具、可用的技术和性能指标。它还介绍了各种研究人员在应用目标检测方法进行医学图像分析方面所做的工作。
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