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Machine Learning-Based Classification of the Health State of Mice Colon in Cancer Study from Confocal Laser Endomicroscopy

机译:基于机器学习的癌症研究中的小鼠癌症的健康状况分类来自共聚焦激光子宫内膜

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In this article, we address the problem of the classification of the health state of the colon's wall of mice, possibly injured by cancer with machine learning approaches. This problem is essential for translational research on cancer and is a priori challenging since the amount of data is usually limited in all preclinical studies for practical and ethical reasons. Three states considered including cancer, health, and inflammatory on tissues. Fully automated machine learning-based methods are proposed, including deep learning, transfer learning, and shallow learning with SVM. These methods addressed different training strategies corresponding to clinical questions such as the automatic clinical state prediction on unseen data using a pre-trained model, or in an alternative setting, real-time estimation of the clinical state of individual tissue samples during the examination. Experimental results show the best performance of 99.93% correct recognition rate obtained for the second strategy as well as the performance of 98.49% which were achieved for the more difficult first case.
机译:在本文中,我们解决了小鼠墙壁的健康状况分类的问题,可能因癌症的机器学习方法受伤。这个问题对于癌症的翻译研究至关重要,并且是先验的具有挑战性,因为所有临床前研究的数据量都是有限的,以获得实际和道德的原因。考虑三种州,包括癌症,健康和炎症。完全自动化的机器学习的方法是提出的,包括深入学习,转移学习和SVM浅学习。这些方法涉及使用预先训练的模型,或在检查期间,在检查期间,在考试期间,在检查期间的临床数据上的临床问题等临床问题的不同训练策略。实验结果表明,对于第二次策略的正确识别率为99.93%的最佳性能,以及98.49%的性能,实现了更困难的第一个案例。

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