Unraveling the Dysbiosis of Vaginal Microbiome to Understand Cervical Cancer Disease Etiology—An Explainable AI Approach
Author | Sekaran, Karthik |
Author | Varghese, Rinku Polachirakkal |
Author | Gopikrishnan, Mohanraj |
Author | Alsamman, Alsamman M. |
Author | El Allali, Achraf |
Author | Zayed, Hatem |
Author | Doss C, George Priya |
Available date | 2023-06-21T07:13:47Z |
Publication Date | 2023-04-18 |
Publication Name | Genes |
Identifier | http://dx.doi.org/10.3390/genes14040936 |
Citation | Sekaran, K., Varghese, R. P., Gopikrishnan, M., Alsamman, A. M., El Allali, A., Zayed, H., & Doss C, G. P. (2023). Unraveling the Dysbiosis of Vaginal Microbiome to Understand Cervical Cancer Disease Etiology—An Explainable AI Approach. Genes, 14(4), 936. |
ISSN | 2073-4425 |
Abstract | Microbial Dysbiosis is associated with the etiology and pathogenesis of diseases. The studies on the vaginal microbiome in cervical cancer are essential to discern the cause and effect of the condition. The present study characterizes the microbial pathogenesis involved in developing cervical cancer. Relative species abundance assessment identified Firmicutes, Actinobacteria, and Proteobacteria dominating the phylum level. A significant increase in Lactobacillus iners and Prevotella timonensis at the species level revealed its pathogenic influence on cervical cancer progression. The diversity, richness, and dominance analysis divulges a substantial decline in cervical cancer compared to control samples. The β diversity index proves the homogeneity in the subgroups’ microbial composition. The association between enriched Lactobacillus iners at the species level, Lactobacillus, Pseudomonas, and Enterococcus genera with cervical cancer is identified by Linear discriminant analysis Effect Size (LEfSe) prediction. The functional enrichment corroborates the microbial disease association with pathogenic infections such as aerobic vaginitis, bacterial vaginosis, and chlamydia. The dataset is trained and validated with repeated k-fold cross-validation technique using a random forest algorithm to determine the discriminative pattern from the samples. SHapley Additive exPlanations (SHAP), a game theoretic approach, is employed to analyze the results predicted by the model. Interestingly, SHAP identified that the increase in Ralstonia has a higher probability of predicting the sample as cervical cancer. New evidential microbiomes identified in the experiment confirm the presence of pathogenic microbiomes in cervical cancer vaginal samples and their mutuality with microbial imbalance. |
Sponsor | The authors acknowledge the Indian Council of Medical Research (ICMR), the Government of India agency, for the research grant No. BMI/12(13)/2021, ID No: 2021-6359, and grant No. VIR/COVID-19/31/2021/ECD-I, ID. NO: 2021-5570. |
Language | en |
Publisher | Multidisciplinary Digital Publishing Institute (MDPI) |
Subject | cervical cancer eXplainable AI SHapley Additive exPlanations vaginal microbiome |
Type | Article |
Issue Number | 4 |
Volume Number | 14 |
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