使用决策树学习方法鉴定医学和法医相关的苍蝇。

IF 0.8 4区 医学 Q4 PARASITOLOGY
C Tanajitaree, S Sanit, K L Sukontason, K Sukontason, P Somboon, W Anakkamatee, J Amendt, K Limsopatham
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引用次数: 1

摘要

苍蝇、肉蝇和家蝇可以为法医昆虫学家提供极好的证据,对公共卫生、医学和动物卫生领域也是必不可少的。在所有问题中,正确识别苍蝇种类是重要的第一步。通常基于形态学甚至分子方法的方法在这里已经达到了极限,特别是在处理大量标本时。由于机器学习已经在教育、商业、工业、科学和医学等日常生活的许多领域发挥着重要作用,因此已有报道将机器学习应用于昆虫分类。本研究采用基于翅膀形态计量学数据的决策树方法,构建了3个科(Calliphoridae, Sarcophagidae, Muscidae)和7个种(megacephala (Fabricius)、rufifacies (Macquart)、nigripes Aubertin (Ceylonomyia)、Lucilia cuprina (Wiedemann)、Hemipyrellia ligurriens (Wiedemann)、domestica Linneaus和pararcophaga (Liosarcophaga) dux Thomson)蝇类的判别模型。科水平的总体准确率为100%,种水平的总体准确率为83.33%。本研究的结果表明,非专家可能会利用这种识别工具。然而,应该研究更多的物种和每个标本的样本,以创建一个可以应用于泰国不同种类苍蝇的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of medically and forensically relevant flies using a decision treelearning method.

Blow flies, flesh flies, and house flies can provide excellent evidence for forensic entomologists and are also essential to the fields of public health, medicine, and animal health. In all questions, the correct identification of fly species is an important initial step. The usual methods based on morphology or even molecular approaches can reach their limits here, especially when dealing with larger numbers of specimens. Since machine learning already plays a major role in many areas of daily life, such as education, business, industry, science, and medicine, applications for the classification of insects have been reported. Here, we applied the decision tree method with wing morphometric data to construct a model for discriminating flies of three families [Calliphoridae, Sarcophagidae, Muscidae] and seven species [Chrysomya megacephala (Fabricius), Chrysomya rufifacies (Macquart), Chrysomya (Ceylonomyia) nigripes Aubertin, Lucilia cuprina (Wiedemann), Hemipyrellia ligurriens (Wiedemann), Musca domestica Linneaus, and Parasarcophaga (Liosarcophaga) dux Thomson]. One hundred percent overall accuracy was obtained at a family level, followed by 83.33% at a species level. The results of this study suggest that non-experts might utilize this identification tool. However, more species and also samples per specimens should be studied to create a model that can be applied to the different fly species in Thailand.

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来源期刊
Tropical biomedicine
Tropical biomedicine 医学-寄生虫学
CiteScore
1.60
自引率
0.00%
发文量
63
审稿时长
6-12 weeks
期刊介绍: The Society publishes the Journal – Tropical Biomedicine, 4 issues yearly. It was first started in 1984. The journal is now abstracted / indexed by Medline, ISI Thompson, CAB International, Zoological Abstracts, SCOPUS. It is available free on the MSPTM website. Members may submit articles on Parasitology, Tropical Medicine and other related subjects for publication in the journal subject to scrutiny by referees. There is a charge of US$200 per manuscript. However, charges will be waived if the first author or corresponding author are members of MSPTM of at least three (3) years'' standing.
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