提高x射线乳房x线造影疗效和安全性的分析优化应用:数据分析、电子工程和人工智能

Chikezie Kennedy Kalu
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引用次数: 0

摘要

目的:分析、理解和探讨常见的x线乳房x线摄影技术、术语和特性;以及如何优化x射线乳房x线照相术系统使其成为更安全,更有效,更高效,更节能的乳腺癌诊断程序;使用深度学习(DL)/人工智能(AI),分析,电子工程,工具和方法。方法:使用经过验证的开源数据存储中的数据和乳腺癌图像数据集;对与妇女乳腺癌诊断和治疗有关的常见x射线乳房x线照相术进行了调查和比较分析;以及利用电子工程原理和人工智能原理对x射线乳房x线摄影特性、程序、过程和系统的质量、强度、辐射光子能量、HVL(半值层)、管电流时间积、金属滤波器特性(例如k边能量切断)和分类验证精度进行优化分析。方法和数据驱动分析使用以下数据、人工智能(AI)和电子工程、方法和算法进行:数据分析、机器学习(ML)工程中的卷积神经网络(CNN)和x射线阻抗电路复合系统分析
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analytical Optimization of X-ray Mammography for Increased Benefits and Safety; using: Data Analytics, Electronics Engineering and Artificial Intelligence
Objective: To analyse, understand and investigate common X-ray Mammography techniques, terminologies and properties; and how the X-ray Mammography systems can be optimized for a safer, more effective, more efficient, more energy efficient procedure for breast cancer diagnosis; using Deep Learning (DL)/ Artificial Intelligence (AI), Analytical, Electronic Engineering, tools and Methodologies. Methods: Using data and breast cancer image datasets from validated open source data stores; investigative and comparative analyses were carried out on common X-ray Mammography techniques in relation to breast cancer diagnosis and treatments for Women; as well as optimization analyses using Electronic engineering principles and Artificial Intelligence principles on the quality, intensity, radiation photon energy, HVL(Half Value Layer), Tube current-time product, Metal filters properties (e.g. K-edge energy cut off), and classification validation accuracy of the X-ray Mammography properties, procedure, processes and systems. The methodical and data-driven analyses were carried out using the following Data, Artificial Intelligence (AI) and Electronic Engineering, methodologies and algorithms: Data Analytics, Convolutional Neural Networks (CNN) in Machine Learning (ML) Engineering, and X-ray-Impedance Circuit Composite System Analysis
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