{"volume":139,"date_updated":"2023-09-11T10:16:55Z","type":"conference","extern":"1","author":[{"first_name":"Hugo","full_name":"Yèche, Hugo","last_name":"Yèche"},{"first_name":"Gideon","full_name":"Dresdner, Gideon","last_name":"Dresdner"},{"orcid":"0000-0002-4850-0683","full_name":"Locatello, Francesco","first_name":"Francesco","id":"26cfd52f-2483-11ee-8040-88983bcc06d4","last_name":"Locatello"},{"last_name":"Hüser","full_name":"Hüser, Matthias","first_name":"Matthias"},{"last_name":"Rätsch","first_name":"Gunnar","full_name":"Rätsch, Gunnar"}],"conference":{"start_date":"2021-07-18","end_date":"2021-07-24","location":"Virtual","name":"International Conference on Machine Learning"},"_id":"14176","alternative_title":["PMLR"],"publication":"Proceedings of 38th International Conference on Machine Learning","publication_status":"published","abstract":[{"text":"Intensive care units (ICU) are increasingly looking towards machine learning for methods to provide online monitoring of critically ill patients. In machine learning, online monitoring is often formulated as a supervised learning problem. Recently, contrastive learning approaches have demonstrated promising improvements over competitive supervised benchmarks. These methods rely on well-understood data augmentation techniques developed for image data which do not apply to online monitoring. In this work, we overcome this limitation by\r\nsupplementing time-series data augmentation techniques with a novel contrastive\r\nlearning objective which we call neighborhood contrastive learning (NCL). Our objective explicitly groups together contiguous time segments from each patient while maintaining state-specific information. Our experiments demonstrate a marked improvement over existing work applying contrastive methods to medical time-series.","lang":"eng"}],"article_processing_charge":"No","department":[{"_id":"FrLo"}],"citation":{"ieee":"H. Yèche, G. Dresdner, F. Locatello, M. Hüser, and G. Rätsch, “Neighborhood contrastive learning applied to online patient monitoring,” in Proceedings of 38th International Conference on Machine Learning, Virtual, 2021, vol. 139, pp. 11964–11974.","short":"H. Yèche, G. Dresdner, F. Locatello, M. Hüser, G. Rätsch, in:, Proceedings of 38th International Conference on Machine Learning, ML Research Press, 2021, pp. 11964–11974.","ama":"Yèche H, Dresdner G, Locatello F, Hüser M, Rätsch G. Neighborhood contrastive learning applied to online patient monitoring. In: Proceedings of 38th International Conference on Machine Learning. Vol 139. ML Research Press; 2021:11964-11974.","mla":"Yèche, Hugo, et al. “Neighborhood Contrastive Learning Applied to Online Patient Monitoring.” Proceedings of 38th International Conference on Machine Learning, vol. 139, ML Research Press, 2021, pp. 11964–74.","apa":"Yèche, H., Dresdner, G., Locatello, F., Hüser, M., & Rätsch, G. (2021). Neighborhood contrastive learning applied to online patient monitoring. In Proceedings of 38th International Conference on Machine Learning (Vol. 139, pp. 11964–11974). Virtual: ML Research Press.","ista":"Yèche H, Dresdner G, Locatello F, Hüser M, Rätsch G. 2021. Neighborhood contrastive learning applied to online patient monitoring. Proceedings of 38th International Conference on Machine Learning. International Conference on Machine Learning, PMLR, vol. 139, 11964–11974.","chicago":"Yèche, Hugo, Gideon Dresdner, Francesco Locatello, Matthias Hüser, and Gunnar Rätsch. “Neighborhood Contrastive Learning Applied to Online Patient Monitoring.” In Proceedings of 38th International Conference on Machine Learning, 139:11964–74. ML Research Press, 2021."},"date_created":"2023-08-22T14:03:04Z","month":"08","page":"11964-11974","status":"public","external_id":{"arxiv":["2106.05142"]},"user_id":"2DF688A6-F248-11E8-B48F-1D18A9856A87","oa":1,"intvolume":" 139","language":[{"iso":"eng"}],"main_file_link":[{"open_access":"1","url":"https://arxiv.org/abs/2106.05142"}],"title":"Neighborhood contrastive learning applied to online patient monitoring","quality_controlled":"1","scopus_import":"1","oa_version":"Preprint","year":"2021","publisher":"ML Research Press","day":"01","date_published":"2021-08-01T00:00:00Z"}