KeyBERT、BERTopic、PyCaret 和 LDAs 方法的异质性分析:卵巢癌中的 P53 使用案例

R.O. Oveh , M. Adewunmi , A.O. Solomon , K.Y. Christopher , P.N. Ezeobi
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引用次数: 0

摘要

近来,具有计算背景的研究人员发现,随着转换器模型和非结构化医疗数据的发展,与人工智能建立联系变得更加容易。本文以卵巢癌 P53 为例,探讨了 keyBERT、BERTopic、PyCaret 和 LDA 作为关键短语生成器和主题模型提取器的异质性。首先使用 Entrez-global 数据库提取有关突变 p53 的 PubMed 摘要,然后使用 Natural Toolkit (NLTK) 进行预处理。PyCaret 用于单字符主题,LDA 用于检查词库中主题之间的交互。最后,使用 Jaccard 相似性指数检查四种方法之间的相似性。结果显示,KeyBERT 与其他三种主题模型之间不存在任何关系,得分为 0.0,而其他三种主题模型之间存在关系,得分为 0.095、0.235、0.4 和 0.111。根据结果可以看出,数据中的关键词、关键短语、相似主题和实体使用了一个密切相关的框架,这可以在建模前对医疗数据进行深入分析。
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Heterogenous analysis of KeyBERT, BERTopic, PyCaret and LDAs methods: P53 in ovarian cancer use case
In recent times, researchers with Computational background have found it easier to relate to Artificial Intelligence with the advancement of the transformer model, and unstructured medical data. This paper explores the heterogeneity of keyBERT, BERTopic, PyCaret and LDAs as key phrase generators and topic model extractors with P53 in ovarian cancer as a use case. PubMed abstract on mutant p53 was first extracted with the Entrez-global database and then preprocessed with Natural Toolkit (NLTK). keyBERT was then used for extracting keyphrases, and BERTopic modelling was used for extracting the related themes. PyCaret was further used for unigram topics and LDAs for examining the interaction among the topics in the word corpus. Lastly, Jaccard similarity index was used to check the similarity among the four methods. The results showed no relationship exists with KeyBERT, having a score of 0.0 while relationship exists among the three other topic models with score of 0.095, 0.235, 0.4 and 0.111. Based on the result, it was observed that keywords, keyphrases, similar topics, and entities embedded in the data use a closely related framework, which can give insights into medical data before modelling.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
自引率
0.00%
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0
审稿时长
187 days
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