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Adaptive Splitting and Selection Method for Noninvasive Recognition of Liver Fibrosis Stage

机译:肝纤维化分期无创识别的自适应分割选择方法

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Therapy of patients suffer form liver diseases strongly depends on the liver fibrosis progression. Unfortunately, to asses it the liver biopsy has been usually used which is an invasive and raging medical procedure which could lead to serious health complications. Additionally even when experienced medical experts perform liver biopsy and read the findings, up to a 20% error rate in liver fibrosis staging has been reported. Nowadays a few noninvasive commercial tests based on the blood examinations are available for the mentioned above problem. Unfortunately they are quite expensive and usually they are not refundable by the health insurance in Poland. Thus, the cross-disciplinary team, which includes researches form the Polish medical and technical universities has started work on new noninvasive method of liver fibrosis stage classification. This paper presents a starting point of the project where several traditional classification methods are compared with the originally developed classifier ensembles based on local specialization of the classifiers in given feature space partitions. The experiment was carried out on the basis of originally acquired database about patients with the different stages of liver fibrosis. The preliminary results are very promising, because they confirmed the possibility of outperforming the noninvasive commercial tests.
机译:患有肝病的患者的治疗在很大程度上取决于肝纤维化的进展。不幸的是,为了对其进行评估,通常已经使用了肝活检,这是一种侵入性的并且肆虐的医疗程序,可能导致严重的健康并发症。此外,即使有经验的医学专家进行肝活检并阅读发现的结果,也有报道肝纤维化分期的错误率高达20%。如今,基于血液检查的一些无创商业测试可用于上述问题。不幸的是,它们非常昂贵,通常波兰的医疗保险无法退款。因此,包括来自波兰医学和技术大学的研究在内的跨学科团队已开始研究肝纤维化阶段分类的新的非侵入性方法。本文提出了一个项目的起点,在该项目中,将几种传统的分类方法与基于给定特征空间分区中分类器局部专业化的最初开发的分类器集合进行比较。实验是在最初获得的有关肝纤维化不同阶段的患者的数据库的基础上进行的。初步结果很有希望,因为它们证实了优于非侵入性商业测试的可能性。

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