<?xml version="1.0" encoding="utf-8" ?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:r="https://r-universe.dev"><channel><title>azizadeboye.r-universe.dev</title><link>https://azizadeboye.r-universe.dev</link><description>Recent package updates in azizadeboye</description><generator>R-universe</generator><image><url>https://github.com/azizadeboye.png</url><title>R packages by azizadeboye</title><link>https://azizadeboye.r-universe.dev</link></image><lastBuildDate>Mon, 30 Mar 2026 06:33:46 GMT</lastBuildDate><item><title>[azizadeboye] mlspatial 0.1.1</title><author>azizadeboye@gmail.com (Adeboye Azeez)</author><description>Provides tools for the integration, visualisation, and
modelling of spatial epidemiological data using the method
described in Azeez, A., &amp; Noel, C. (2025). 'Predictive
Modelling and Spatial Distribution of Pancreatic Cancer in
Africa Using Machine Learning-Based Spatial Model'
&lt;doi:10.5281/zenodo.16529986&gt; and
&lt;doi:10.5281/zenodo.16529016&gt;. It facilitates the analysis of
geographic health data by combining modern spatial mapping
tools with advanced machine learning (ML) algorithms.
'mlspatial' enables users to import and pre-process shapefile
and associated demographic or disease incidence data, generate
richly annotated thematic maps, and apply predictive models,
including Random Forest, 'XGBoost', and Support Vector
Regression, to identify spatial patterns and risk factors. It
is suited for spatial epidemiologists, public health
researchers, and GIS analysts aiming to uncover hidden
geographic patterns in health-related outcomes and inform
evidence-based interventions.</description><link>https://github.com/r-universe/azizadeboye/actions/runs/28642688861</link><pubDate>Mon, 30 Mar 2026 06:33:46 GMT</pubDate><r:package>mlspatial</r:package><r:version>0.1.1</r:version><r:status>success</r:status><r:repository>https://azizadeboye.r-universe.dev</r:repository><r:upstream>https://github.com/azizadeboye/mlspatial</r:upstream><r:article><r:source>mlspatial.Rmd</r:source><r:filename>mlspatial.html</r:filename><r:title>mlspatial:Spatial Machine Learning workflow</r:title><r:created>2026-03-26 11:52:41</r:created><r:modified>2026-03-27 09:23:35</r:modified></r:article></item></channel></rss>