增强的深度学习框架模型用于乳腺癌受癌部位的准确分割

Kranti Kumar Dewangan, S. Sahu, R. Janghel
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引用次数: 0

摘要

乳腺癌是全世界女性死亡的主要原因之一。因此,在早期阶段对乳腺癌进行识别和分类是帮助患者采取适当行动的必要条件。在这项研究中,一种新的基于蜘蛛猴的卷积模型(SMCM)被开发用于检测早期乳腺癌细胞。在这里,使用乳房磁共振成像(MRI)作为训练到系统的数据集。此外,将开发的SMCM函数在乳腺MRI数据集上进行处理,初步检测和分割乳腺癌的影响部位。此外,利用分割图像在数据集中进行跟踪,以识别乳腺癌的可能性。此外,利用Python工具对该方法进行了仿真,并对当前研究工作的参数进行了评价。因此,结果表明,与现有模型相比,当前研究模型的准确率提高了1.5%。
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Enhanced deep learning frame model for an accurate segmentation of cancer affected part in breast
Breast cancer is one of the primary causes of death in females worldwide. So, recognizing and categorizing breast cancer in the initial stage is necessary for helping the patients to have suitable action. In this research, a novel spider monkey‐based convolution model (SMCM) is developed for detecting breast cancer cells in an early stage. Here, breast magnetic resonance imaging (MRI) is utilized as the dataset trained to the system. Moreover, the developed SMCM function is processed on the breast MRI dataset to primarily detect and segment the affected part of breast cancer. Additionally, segmented images are utilized for tracking in the dataset to identify the possibility of breast cancer. Moreover, the simulation of this approach is done by Python tool, and the parameters of the current research work are evaluated with prevailing works. Hence, the outcomes show that the current research model has improved accuracy by 1.5% compared to existing models.
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