Automated Medical Visualization Application of Supervised Learning to Clinical Diagnosis, Disease and Therapy Management.docx

A. Adeshina
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Abstract

The rapid advancement and development in high performance computing, ultrafast computing, autonomous technologies and complexity of biomedical data for visualization and image guidance play a significant role in modern surgery to help surgeons perform their surgical procedures. Brain tumour diagnosis requires an enhanced, effective as well as accurate 3-D visualization system for navigation, reference, diagnosis as well as documentation. The automatic and effective 3-D high performance artificial intelligence-enabled medical visualization framework was designed and implemented using automated machine learning (AutoML) to take the advantage of complexity in the underlying datasets to help specialists in identifying the most appropriate regions of interest and their associated hyper parameters for optimizing performance, whilst simultaneously attempting to maximize the reliability of resulting predictions. C# and Compute Unified Device Architecture (CUDA) in Microsoft.NET environment in comparison side by side with visual basic studio was used for the implementation. The framework was evaluated for rendering processing speed with brain datasets obtained from the department of surgery, University of North Carolina, United States. Interestingly, our framework achieves 3-D visualization of the human brain, reliable enough to detect and locate possible brain tumor with high interactive speed and accuracy.
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监督学习在临床诊断、疾病和治疗管理中的自动化医学可视化应用
高性能计算、超快计算、自主技术和生物医学数据的复杂性在可视化和图像引导方面的快速进步和发展,在现代外科手术中发挥着重要作用,帮助外科医生完成手术。脑肿瘤诊断需要一个增强的、有效的、准确的三维可视化系统,用于导航、参考、诊断和记录。使用自动机器学习(AutoML)设计和实现了自动有效的3-D高性能人工智能医学可视化框架,以利用底层数据集的复杂性,帮助专家识别最合适的感兴趣区域及其相关超参数以优化性能,同时尝试最大限度地提高结果预测的可靠性。c#和计算统一设备架构(CUDA)在微软。采用。NET环境与visual basic studio进行对比实现。使用从美国北卡罗来纳大学外科获得的大脑数据集对该框架的渲染处理速度进行了评估。有趣的是,我们的框架实现了人类大脑的三维可视化,足够可靠,可以以高交互速度和准确性检测和定位可能的脑肿瘤。
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