基于物联网的乳腺癌智能诊断早期检测集成医疗系统

Shruthishree S.H ., Harshvardhan Tiwari, D. Verma
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引用次数: 2

摘要

乳腺癌是世界范围内主要的癌症相关疾病之一,主要影响青春期后的女性。尽管这种疾病是致命的,每年导致数千人死亡,但如果发现得快,大多数情况下是可以治愈的。因此,及时和精确的检测方法对患者的生存至关重要。以前,医生使用手动检测系统来实现这一目标。然而,这些技术进展缓慢,而且往往依赖于医生的专业知识。随着技术的进步,这些原始方法被计算机辅助检测(CAD)算法所补充。由于大数据、物联网(IoT)、互联设备以及使用gpu和tpu的高性能计算机的大规模发展,深度学习非常普遍。物联网(IoT)最近取得了进展,医疗保健行业正从这一增长中受益。为所需分析收集数据的传感器是物联网中使用的关键组件。借助物联网,医生和医务人员将能够轻松、智能地执行任务。本研究的重点是整合Alexnet和ResNet101,从乳房x光片数据中准确预测乳腺恶性肿瘤。这种方法将比任何其他预训练模型的组合更精确地针对特征。最后,为了解决计算量大的问题,采用了特征缩减的relief方法。为了演示所提出的方法,使用了750个BU映像的在线公开发布的数据集。为了训练和测试模型,数据集被进一步分成80%和20%的比例。经过广泛的测试和分析,发现DenseNet-201和MobileNet-v2训练的支持向量机在原始和增强的哺乳动物图像在线数据集上的准确率分别达到98.39%。本研究发现,所提出的方法是有效和简单的实施,以协助放射技师和医生诊断女性乳腺癌。
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Integrated IoT-based Healthcare System for the Early Detection of Breast Cancer Using Intelligent Diagnostic System
Breast cancer represents one of the leading cancer-related diseases worldwide, affecting mostly women after puberty. Even though the illness is fatal and kills thousands of people each year, it is mostly curative if found quickly. As a result, prompt and precise detection methods are critical to patient survival. Previously, doctors used manual detection systems for this objective. However, such techniques have been slow and frequently dependent on the physician's expertise. As technology advanced, these primitive methodologies were supplemented by computer-aided detection (CAD) algorithms. Deep learning is extremely common because of the massive development in large data, the Internet of Things (IoT), linked devices, and high-performance computers using GPUs and TPUs. The Internet of Things (IoT) has advanced recently, and the healthcare industry is benefiting from this growth. Sensors that gather data for required analysis are crucial components utilized in the Internet of Things. Physicians and medical staff will be able to carry out their tasks with ease and intelligence thanks to the Internet of Things. The proposed research focus on integrating Alexnet and ResNet101 for accurate prediction of Breast malignancy from mammogram data. This methodology will target the features more precisely than any other combination of the pre-trained model. Finally, to resolve the computational burden issue, the feature reduction ReliefF methodology is used. To demonstrate the proposed method, an online publicly released set of data of 750 BU images is used. For training and testing the models, the set of data has been further split into 80 and 20% ratios. Following extensive testing and analysis, it was discovered that the DenseNet-201 and MobileNet-v2 trained SVMs to have an accuracy of 98.39 percent for the original and augmented Mammo images online datasets, respectively. This research discovered that the proposed approach is efficient and simple to implement to assist radiographers and physicians in diagnosing breast cancer in females.
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