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Classification of melanomas in situ using knowledge discovery with explained case-based reasoning

机译:使用基于发现的案例推理的知识发现对黑素瘤进行原位分类

摘要

Objective: Early diagnosis of melanoma is based on the ABCD rule which considers asymmetry, border irregularity, color variegation, and a diameter larger than 5. mm as the characteristic features of melanomas. When a skin lesion presents these features it is excised as prevention. Using a non-invasive technique called dermoscopy, dermatologists can give a more accurate evaluation of skin lesions, and can therefore avoid the excision of lesions that are benign. However, dermatologists need to achieve a good dermatoscopic classification of lesions prior to extraction. In this paper we propose a procedure called LazyCL to support dermatologists in assessing the classification of skin lesions. Our goal is to use LazyCL for generating a domain theory to classify melanomas in situ. Methods: To generate a domain theory, the LazyCL procedure uses a combination of two artificial intelligence techniques: case-based reasoning and clustering. First LazyCL randomly creates clusters and then uses a lazy learning method called lazy induction of descriptions (LID) with leave-one-out on them. By means of LID, LazyCL collects explanations of why the cases in the database should belong to a class. Then the analysis of relationships among explanations produces an understandable clustering of the dataset. After a process of elimination of redundancies and merging of clusters, the set of explanations is reduced to a subset of it describing classes that are > almost> discriminant. The remaining explanations form a preliminary domain theory that is the basis on which experts can perform knowledge discovery. Results: We performed two kinds of experiments. First ones consisted on using LazyCL on a database containing the description of 76 melanomas. The domain theory obtained from these experiments was compared on previous experiments performed using a different clustering method called self-organizing maps (SOM).Results of both methods, LazyCL and SOM, were similar. The second kind of experiments consisted on using LazyCL on well known domains coming from the machine learning repository of the Irvine University. Thus, since these domains have known solution classes, we can prove that the clusters build by LazyCL are correct. Conclusions: We can conclude that LazyCL that uses explained case-based reasoning for knowledge discovery is feasible for constructing a domain theory. On one hand, experiments on the melanoma database show that the domain theory build by LazyCL is easy to understand. Explanations provided by LID are easily understood by domain experts since these descriptions involve the same attributes than they used to represent domain objects. On the other hand, experiments on standard machine learning data sets show that LazyCL is a good method of clustering since all clusters produced are correct. © 2010 Elsevier B.V.
机译:目的:黑色素瘤的早期诊断基于ABCD规则,该规则将不对称,边界不规则,颜色多样化以及直径大于5毫米的特征视为黑色素瘤的特征。当皮肤病变表现出这些特征时,则作为预防切除。使用称为皮肤镜检查的非侵入性技术,皮肤科医生可以对皮肤病变进行更准确的评估,因此可以避免切除良性病变。但是,皮肤科医生需要在提取前对病变进行良好的皮肤镜分类。在本文中,我们提出了一种名为LazyCL的程序,以支持皮肤科医生评估皮肤病变的分类。我们的目标是使用LazyCL生成域理论对原位黑色素瘤进行分类。方法:为了生成领域理论,LazyCL过程使用了两种人工智能技术的组合:基于案例的推理和聚类。首先,LazyCL随机创建集群,然后使用称为“懒惰归纳描述(LID)”的懒惰学习方法,对它们进行遗忘。通过LID,LazyCL收集有关为什么数据库中的案例应属于一个类的说明。然后,对解释之间的关系进行分析,可以得出可理解的数据集聚类。经过消除冗余和合并群集的过程之后,这组解释被简化为描述>几乎>判别类的子集。其余的说明构成了一个初步的领域理论,是专家进行知识发现的基础。结果:我们进行了两种实验。首先是在包含76个黑色素瘤描述的数据库上使用LazyCL。从这些实验中获得的域理论与之前使用不同的聚类方法自组织图(SOM)进行的实验进行了比较.LazyCL和SOM的结果相似。第二种实验包括在来自尔湾大学机器学习存储库的知名域上使用LazyCL。因此,由于这些域具有已知的解决方案类别,因此我们可以证明LazyCL构建的集群是正确的。结论:我们可以得出结论,使用解释的基于案例的推理进行知识发现的LazyCL对于构建领域理论是可行的。一方面,在黑色素瘤数据库上进行的实验表明,LazyCL建立的域理论很容易理解。 LID提供的说明容易被域专家理解,因为这些描述所涉及的属性与用于表示域对象的属性相同。另一方面,对标准机器学习数据集的实验表明,LazyCL是一种很好的聚类方法,因为产生的所有聚类都是正确的。 ©2010 Elsevier B.V.

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    Armengol Eva;

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  • 年度 2016
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  • 正文语种 eng
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