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首页> 外文期刊>BMC Medical Education >Smartpath k : a platform for teaching glomerulopathies using machine learning
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Smartpath k : a platform for teaching glomerulopathies using machine learning

机译:SmartPath K:使用机器学习教授肾小球疗法的平台

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摘要

With the emergence of the new coronavirus pandemic (COVID-19), distance learning, especially that mediated by information and digital communication technologies, has been adopted in all areas of knowledge and at all levels, including medical education. Imminently practical areas, such as pathology, have made traditional teaching based on conventional microscopy more flexible through the synergies of computational tools and image digitization, not only to improve teaching-learning but also to offer alternatives to repetitive and exhaustive histopathological analyzes. In this context, machine learning algorithms capable of recognizing histological patterns in kidney biopsy slides have been developed and validated with a view to building computational models capable of accurately identifying renal pathologies. In practice, the use of such algorithms can contribute to the universalization of teaching, allowing quality training even in regions where there is a lack of good nephropathologists. The purpose of this work is to describe and test the functionality of SmartPathk, a tool to support teaching of glomerulopathies using machine learning. The training for knowledge acquisition was performed automatically by machine learning methods using the J48 algorithm to create a computational model of an appropriate decision tree. An intelligent system, SmartPathk, was developed as a complementary remote tool in the teaching-learning process for pathology teachers and their students (undergraduate and graduate students), showing 89,47% accuracy using machine learning algorithms based on decision trees. This artificial intelligence system can assist in teaching renal pathology to increase the training capacity of new medical professionals in this area.
机译:随着新的冠状病毒流行病(Covid-19),远程学习,特别是由信息和数字通信技术介导的,在所有知识领域和各级都采用,包括医学教育。诸如病理学等实际区域,通过计算工具和图像数字化的协同作用,基于传统显微镜的传统教学进行了传统教学,不仅要改善教学学习,还可以提供重复和详尽的组织病理学分析的替代方案。在这种情况下,已经开发并验证了能够识别肾活组织检查载玻片中的组织学模式的机器学习算法,并验证了能够准确地识别肾病学的计算模型。在实践中,使用这种算法可以促进教学的普及化,即使在缺乏良好的肾病学家的地区,也允许质量训练。这项工作的目的是描述和测试SmartPaths的功能,使用机器学习支持肾小球疗法教学的工具。通过机器学习方法使用J48算法自动进行知识获取培训,以创建适当的决策树的计算模型。智能系统SmartPathk被开发为病理学教师和学生教学过程中的互补遥控工具(本科和研究生),使用基于决策树的机器学习算法显示89,47%的准确性。这种人工智能系统可以帮助教学肾脏病理学,以提高该地区新医疗专业人员的培训能力。

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