BDPM: A Machine Learning-Based Feature Extractor for Parkinson's Disease Classification via Gut Microbiota Analysis
- URL: http://arxiv.org/abs/2509.07723v1
- Date: Tue, 09 Sep 2025 13:24:25 GMT
- Title: BDPM: A Machine Learning-Based Feature Extractor for Parkinson's Disease Classification via Gut Microbiota Analysis
- Authors: Bo Yu, Zhixiu Hua, Bo Zhao,
- Abstract summary: Parkinson's disease remains a major neurodegenerative disorder with high misdiagnosis rates.<n>Recent studies have demonstrated a strong association between gut microbiota and Parkinson's disease.<n>Deep learning models based ongut microbiota show potential for early prediction.
- Score: 4.4187735824968835
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Background: Parkinson's disease remains a major neurodegenerative disorder with high misdiagnosis rates, primarily due to reliance on clinical rating scales. Recent studies have demonstrated a strong association between gut microbiota and Parkinson's disease, suggesting that microbial composition may serve as a promising biomarker. Although deep learning models based ongut microbiota show potential for early prediction, most approaches rely on single classifiers and often overlook inter-strain correlations or temporal dynamics. Therefore, there is an urgent need for more robust feature extraction methods tailored to microbiome data. Methods: We proposed BDPM (A Machine Learning-Based Feature Extractor for Parkinson's Disease Classification via Gut Microbiota Analysis). First, we collected gut microbiota profiles from 39 Parkinson's patients and their healthy spouses to identify differentially abundant taxa. Second, we developed an innovative feature selection framework named RFRE (Random Forest combined with Recursive Feature Elimination), integrating ecological knowledge to enhance biological interpretability. Finally, we designed a hybrid classification model to capture temporal and spatial patterns in microbiome data.
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