1304 Robust machine learning (ML) approach for screening microbiome ecosystem therapies (MET) drug candidates in combination with immune checkpoint inhibitors
Emmanuel Prestat, Elsa Schalck, Antoine Bonnefoy, Antoine Sabourin, Cyrielle Gasc, Carole Schwintner, Nathalie Corvaia
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引用次数: 0
Abstract
Background
Studies for the last 8 years have connected gut microbiome composition to ICI efficacy in cancer therapy, including pilot studies1 2 demonstrating that FMT from responders to non-responders can improve response rates. However, interstudy inconsistencies were observed in microbiome signature findings3 also confirmed when reprocessing internally raw data from multiple studies. It remains critical to tackle this heterogeneity to learn from stable patterns and develop a robust and reliable drug candidate screening algorithm. Hence, MaaT Pharma developed an AI framework to train models from microbiota Whole Metagenome Sequencing (WMS) datasets that predict the responder status to ICIs. We focused on performance and robustness, which was achieved by monitoring the AUC as a standard approach, and precision to control for false positive rate and to emphasize the positive classification criticality in a drug candidate selection approach.
Methods
We collected baseline WMS datasets from 10 cohorts in 3 ICI indications: melanoma, non-small cell lung cancer and renal cell carcinoma, along with clinical evaluation of ICI treatment. Those datasets were processed by gutPrint® MgRunner software, before being included in the AI framework. About 70 experiments were conducted within a Leave-One-Dataset-Out cross-validation scheme. Various factors such as taxonomic or functional inputs, dataset bias correction, data augmentation approaches, ML algorithms and data representation methods, were tested to select the top ones. Finally, a model was refit with the best performing parameters on the entire dataset, and applied to score MaaT Pharma mono-donor and healthy-pooled-donors-derived drug substances (DS).
Results
The best performing experiment provided models based on the XGBoost algorithm with AUCs ranging from 0.52 to 0.73 depending on the left-out cohort (average AUC = 0.65), and a precision that ranges between 0.55 and 0.81 (average precision = 0.65). Those results outperform melanoma-centered study with a comparable method.4 Despite the diverse data sources and indications, the multi-indication approach surpassed the mono-indication (melanoma) training approach for predictions related to melanoma patients. Considering the scoring of DS derived from healthy donors, 73% of mono-donors and 91% of healthy-pooled-donors-derived DS were classified as ‘Responder-like’.
Conclusions
Present study highlights the significance of dataset size in ICI microbiota models and presents a methodology to enhance the performances of a multi-cohort-based ML approach. Conditioned to the performances we obtained, the healthy-pooled-donors-derived DS harbor a considerable ratio (91%) of ‘ICI Responder-like’, significantly higher than the mono-donor stools (73%) suggesting that pooled ecosystems from healthy donors could better convert ICI-non responders into responders.
References
D Davar, et al. ‘Fecal microbiota transplant overcomes resistance to anti-PD-1 therapy in melanoma patients,’ Science, Feb. 2021;371(6529):595–602, doi: 10.1126/science.abf3363. EN Baruch, et al. ‘Fecal microbiota transplant promotes response in immunotherapy-refractory melanoma patients,’ Science, Dec. 2020;371(6529):602–609, doi: 10.1126/science.abb5920. S Wojciechowski, et al. ‘Machine learning on the road to unlocking microbiota’s potential for boosting immune checkpoint therapy,’ International Journal of Medical Microbiology, Oct. 2022;312(7):151560, Oct. 2022, doi: 10.1016/j.ijmm.2022.151560. KA Lee, et al. ‘Cross-cohort gut microbiome associations with immune checkpoint inhibitor response in advanced melanoma,’ Nat Med, 2022;28(3):535–544, doi: 10.1038/s41591–022-01695–5.