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Creational and Structural Patterns in a Flexible Machine Learning Framework for Medical Ultrasound Diagnostics

机译:柔性机器学习框架的创造与结构模式,用于医疗超声诊断

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The impact of machine learning in medicine has arguably lagged behind its commercial counterparts. This may be attributable to the generally slower pace and higher costs associated with clinical applications, but also present are the conflicting constraints and requirements of learning from data in a highly regulated industry that introduce levels of complexity unique to the medical space. Because of this, the balance between innovation and controlled development is challenging. Adding to this are the multiple modalities found in most clinical applications where applying traditional machine learning preprocessing and cross-validation techniques can be precarious. This work presents the novel use of creational and structural design patterns in a generalized software framework intended to alleviate some of those difficulties. Designed to be a configurable pipeline to not only support the experimentation and development of diagnostic machine learning algorithms, but also to support the transition of those algorithms into production level systems in a composed manner. The resulting framework provides the foundation for developing unique tools by both novice and expert data scientists.
机译:机器学习在医学中的影响可谓落后于其商业同行。这可能归因于普遍较慢的步伐和与临床应用相关的更高的成本,而且还存在对高度监管行业中的数据的冲突的限制和要求,这些行业中的数据介绍了对医疗空间独一无二的复杂程度。因此,创新和控制发展之间的平衡是具有挑战性的。添加到这是大多数临床应用中发现的多种模式,其中应用传统机器学习预处理和交叉验证技术可能是不稳定的。这项工作介绍了在广义软件框架中的新颖使用,旨在缓解其中一些困难的软件框架。该设计是一种可配置的管道,不仅支持诊断机器学习算法的实验和开发,还支持以组合的方式转换到生产水平系统中的转换。由此产生的框架为新手和专家数据科学家开发独特工具提供了基础。

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