使用bcmax双聚类算法基于传染病百分比的省聚类。

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES Geospatial Health Pub Date : 2023-09-12 DOI:10.4081/gh.2023.1202
Muhammad Nur Aidi, Cynthia Wulandari, Sachnaz Desta Oktarina, Taufiqur Rakhim Aditra, Fitrah Ernawati, Efriwati Efriwati, Nunung Nurjanah, Rika Rachmawati, Elisa Diana Julianti, Dian Sundari, Fifi Retiaty, Aya Yuriestia Arifin, Rita Marleta Dewi, Nazarina Nazaruddin, Salimar Salimar, Noviati Fuada, Yekti Widodo, Budi Setyawati, Nuzuliyati Nurhidayati, Sudikno Sudikno, Irlina Raswanti Irawan, Widoretno Widoretno
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引用次数: 0

摘要

印度尼西亚需要降低其高传染病率。这需要可靠的数据,并跟踪各省的时间变化。我们调查了使用imax双聚类算法调查流行病学情况的好处,这些数据来自最近覆盖印度尼西亚34个省的国家基础卫生研究(Riskesdas)对主要传染病进行的全国范围调查。分层聚类和k-means聚类只能处理一个数据源,但bcmax双聚类可以聚类数据矩阵中的行和列。几个实验确定了最佳行和列阈值,这对于有用的结果至关重要。印度尼西亚七种最常见的传染病(急性呼吸道感染、肺炎、腹泻、结核病、肝炎、疟疾和丝虫病)的百分比按省排序,不考虑邻近性,因为聚集性病群通常相距很远。急性呼吸道感染、肺炎和腹泻被分为幼儿感染和成人感染,使目标疾病从7种增加到10种。根据这些疾病的存在和水平形成的一组双聚类包括7种中度至高度疾病、5种疾病(由2个聚类组成)、3种疾病、2种疾病,以及一个仅包括成人腹泻的最终顺序。在印度尼西亚8个群集中的6个群集中,腹泻是最普遍的传染病,因此将其根除列为优先事项。在8个聚集性病例中,有4-6例发现了急性呼吸道感染、肺炎、结核病和腹泻等直接人际感染。这些疾病比疟疾和丝虫病等病媒传播疾病更常见,传播速度更快,因此更为重要。
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Province clustering based on the percentage of communicable disease using the BCBimax biclustering algorithm.

Indonesia needs to lower its high infectious disease rate. This requires reliable data and following their temporal changes across provinces. We investigated the benefits of surveying the epidemiological situation with the imax biclustering algorithm using secondary data from a recent national scale survey of main infectious diseases from the National Basic Health Research (Riskesdas) covering 34 provinces in Indonesia. Hierarchical and k-means clustering can only handle one data source, but BCBimax biclustering can cluster rows and columns in a data matrix. Several experiments determined the best row and column threshold values, which is crucial for a useful result. The percentages of Indonesia's seven most common infectious diseases (ARI, pneumonia, diarrhoea, tuberculosis (TB), hepatitis, malaria, and filariasis) were ordered by province to form groups without considering proximity because clusters are usually far apart. ARI, pneumonia, and diarrhoea were divided into toddler and adult infections, making 10 target diseases instead of seven. The set of biclusters formed based on the presence and level of these diseases included 7 diseases with moderate to high disease levels, 5 diseases (formed by 2 clusters), 3 diseases, 2 diseases, and a final order that only included adult diarrhoea. In 6 of 8 clusters, diarrhea was the most prevalent infectious disease in Indonesia, making its eradication a priority. Direct person-to-person infections like ARI, pneumonia, TB, and diarrhoea were found in 4-6 of 8 clusters. These diseases are more common and spread faster than vector-borne diseases like malaria and filariasis, making them more important.

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来源期刊
Geospatial Health
Geospatial Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
2.40
自引率
11.80%
发文量
48
审稿时长
12 months
期刊介绍: The focus of the journal is on all aspects of the application of geographical information systems, remote sensing, global positioning systems, spatial statistics and other geospatial tools in human and veterinary health. The journal publishes two issues per year.
期刊最新文献
Childhood stunting in Indonesia: assessing the performance of Bayesian spatial conditional autoregressive models. A two-stage location model covering COVID-19 sampling, transport and DNA diagnosis: design of a national scheme for infection control. The distribution of cardiovascular diseases in Tanzania: a spatio-temporal investigation. Performance of a negative binomial-GLM in spatial scan statistic: a case study of low-birth weights in Pakistan. Tuberculosis in Aceh Province, Indonesia: a spatial epidemiological study covering the period 2019-2021.
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