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A Novel Neutrosophic Method for Automatic Seed Point Selection in Thyroid Nodule Images

机译:甲状腺结节图像中自动选择种子点的新型中智方法

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摘要

The thyroid nodule is one of the endocrine issues caused by an irregular cell development. This rate of survival can be improved by earlier nodule detection. Accordingly, the accurate recognition of the nodule is of the utmost importance in providing powerful results in building the survival rate. The reduction in the accuracy of manual or semiautomatic segmentation methods for thyroid nodule detection is due to many factors, basically, the lack of experience of the sonographer and latency of operation. Most lesion regions in ultrasound images are homogeneous. Therefore, the value of entropy in these regions is high compared to its neighbours. Based on this criterion, a novel procedure for automatically selecting the seed point in thyroid nodule images is proposed. The proposed system consists of three components: neutrosophic image enhancement and speckle reduction to reduce speckle noise and automatic seed selection algorithm extracted from the centre of candidate block in ultrasound thyroid images based on the principle that most of its Higher Order Spectra Entropies (HOSE) from Radon Transform (RT) at different angles are within the range between average and maximum entropies, and the region growing image segmentation is applied with the constant threshold. The performance of proposed automatic segmentation method is compared with other methods in terms of calculating, True Positive (TP) value (96.44 ± 3.01%), False Positive (FP) value (3.55 ± 1.45%), Dice Coefficient (DC) value (92.24 ± 6.47%), Similarity Index (SI) (80.57 ± 1.06%), and Hausdroff Distance (HD) (0.42 ± 0.24 pixels). The proposed system can be considered as an added value to the malignancy diagnosis in thyroid nodule by an endocrinologist.
机译:甲状腺结节是由不规则细胞发育引起的内分泌问题之一。通过早期的结节检测可以提高生存率。因此,对结节的准确识别对于在建立存活率方面提供有力的结果至关重要。手工或半自动甲状腺结节检测方法的准确性降低是由于许多因素,基本上是由于缺乏超声检查医师的经验和手术潜伏期。超声图像中的大多数病变区域是均匀的。因此,与邻近区域相比,这些区域的熵值较高。基于这一标准,提出了一种自动选择甲状腺结节图像中种子点的新方法。拟议的系统由三部分组成:中智图像增强和斑点减少以减少斑点噪声,以及基于其大部分高阶光谱熵(HOSE)来自超声甲状腺图像中候选块中心提取的自动种子选择算法。不同角度的Radon变换(RT)处于平均和最大熵之间的范围内,并且以恒定阈值应用区域增长图像分割。在计算,真阳性(TP)值(96.44±3.01%),假阳性(FP)值(3.55±1.45%),骰子系数(DC)( 92.24±6.47%),相似性指数(SI)(80.57±1.06%)和Hausdroff距离(HD)(0.42±0.24像素)。提议的系统可以被内分泌学家认为是甲状腺结节恶性肿瘤诊断的附加值。

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