Accurate segmentation of inflammatory and abnormal regions using medical thermal imagery.

Q3 Biochemistry, Genetics and Molecular Biology Australasian Physical & Engineering Sciences in Medicine Pub Date : 2019-06-01 Epub Date: 2019-04-05 DOI:10.1007/s13246-019-00753-6
Kakali Das, Mrinal Kanti Bhowmik, Omkar Chowdhuary, Debotosh Bhattacharjee, Barin Kumar De
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引用次数: 2

Abstract

Methodologies reported in the existing literature for identification of a region of interest (ROI) in medical thermograms suffer from over- and under-extraction of the abnormal and/or inflammatory region, thereby causing inaccurate diagnoses of the spread of an abnormality. We overcome this limitation by exploiting the advantages of a logarithmic transformation. Our algorithm extends the conventional region growing segmentation technique with a modified similarity criteria and a stopping rule. In this method, the ROI is generated by taking common information from two independent regions produced by two different versions of a region-growing algorithm that use different parameters. An automatic multi-seed selection procedure prevents missed segmentations in the proposed approach. We validate our technique by experimentation on various thermal images of the inflammation of affected knees and abnormal breasts. The images were obtained from three databases, namely the Knee joint dataset, the DBT-TU-JU dataset, and the DMR-IR dataset. The superiority of the proposed technique is established by comparison to the performance of state-of-the-art competing methodologies. This study performed temperature emitted inflammatory area segmentation on thermal images of knees and breasts. The proposed segmentation method is of potential value in thermal image processing applications that require expediency and automation.

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利用医学热图像对炎症和异常区域进行精确分割。
现有文献中报道的用于识别医学热像图中感兴趣区域(ROI)的方法存在对异常和/或炎症区域提取过度和不足的问题,从而导致对异常扩散的不准确诊断。我们利用对数变换的优点克服了这个限制。该算法扩展了传统的区域增长分割技术,改进了相似度准则和停止规则。在这种方法中,ROI是通过从使用不同参数的两个不同版本的区域增长算法产生的两个独立区域中获取共同信息来生成的。在该方法中,一个自动的多种子选择过程防止了遗漏的分割。我们验证了我们的技术通过实验的各种热图像的影响膝盖和乳房异常炎症。图像来自三个数据库,分别是膝关节数据集、DBT-TU-JU数据集和DMR-IR数据集。通过与最先进的竞争方法的性能进行比较,确定了所提出技术的优越性。本研究对膝关节和乳房的热图像进行了温度发射炎症区分割。所提出的分割方法在需要方便和自动化的热图像处理应用中具有潜在的价值。
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Australasian Physical & Engineering Sciences in Medicine (APESM) is a multidisciplinary forum for information and research on the application of physics and engineering to medicine and human physiology. APESM covers a broad range of topics that include but is not limited to: - Medical physics in radiotherapy - Medical physics in diagnostic radiology - Medical physics in nuclear medicine - Mathematical modelling applied to medicine and human biology - Clinical biomedical engineering - Feature extraction, classification of EEG, ECG, EMG, EOG, and other biomedical signals; - Medical imaging - contributions to new and improved methods; - Modelling of physiological systems - Image processing to extract information from images, e.g. fMRI, CT, etc.; - Biomechanics, especially with applications to orthopaedics. - Nanotechnology in medicine APESM offers original reviews, scientific papers, scientific notes, technical papers, educational notes, book reviews and letters to the editor. APESM is the journal of the Australasian College of Physical Scientists and Engineers in Medicine, and also the official journal of the College of Biomedical Engineers, Engineers Australia and the Asia-Oceania Federation of Organizations for Medical Physics.
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Acknowledgment of Reviewers for Volume 35 Acknowledgment of Reviewers for Volume 34 A comparison between EPSON V700 and EPSON V800 scanners for film dosimetry. Nanodosimetric understanding to the dependence of the relationship between dose-averaged lineal energy on nanoscale and LET on ion species. EPSM 2019, Engineering and Physical Sciences in Medicine : 28-30 October 2019, Perth, Australia.
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