























[edit]
[edit]
Editors: Subhrajit Roy, Stephen Pfohl, Emma Rocheteau, Girmaw Abebe Tadesse, Luis Oala, Fabian Falck, Yuyin Zhou, Liyue Shen, Ghada Zamzmi, Purity Mugambi, Ayah Zirikly, Matthew B. A. McDermott, Emily Alsentzer
Filter Authors: Filter Titles:
Machine Learning for Health (ML4H) 2021
Subhrajit Roy, Stephen Pfohl, Girmaw Abebe Tadesse, Luis Oala, Fabian Falck, Yuyin Zhou, Liyue Shen, Ghada Zamzmi, Purity Mugambi, Ayah Zirikly, Matthew B. A. McDermott, Emily Alsentzer; Proceedings of Machine Learning for Health, PMLR 158:1-12
[abs][Download PDF]
Question Answering for Complex Electronic Health Records Database using Unified Encoder-Decoder Architecture
; Proceedings of Machine Learning for Health, PMLR 158:13-25
[abs][Download PDF]
Attention Distillation for Detection Transformers: Application to Real-Time Video Object Detection in Ultrasound
Jonathan Rubin, Ramon Erkamp, Ragha Srinivasa Naidu, Anumod Odungatta Thodiyil, Alvin Chen; Proceedings of Machine Learning for Health, PMLR 158:26-37
[abs][Download PDF]
Towards Explainable End-to-End Prostate Cancer Relapse Prediction from H&E Images Combining Self-Attention Multiple Instance Learning with a Recurrent Neural Network
Esther Dietrich, Patrick Fuhlert, Anne Ernst, Guido Sauter, Maximilian Lennartz, H. Siegfried Stiehl, Marina Zimmermann, Stefan Bonn; Proceedings of Machine Learning for Health, PMLR 158:38-53
[abs][Download PDF]
How Transferable are Self-supervised Features in Medical Image Classification Tasks?
Tuan Truong, Sadegh Mohammadi, Matthias Lenga; Proceedings of Machine Learning for Health, PMLR 158:54-74
[abs][Download PDF]
SmartTriage: A system for personalized patient data capture, documentation generation, and decision support
Ilya Valmianski, Nave Frost, Navdeep Sood, Yang Wang, Baodong Liu, James J. Zhu, Sunil Karumuri, Ian M. Finn, Daniel S. Zisook; Proceedings of Machine Learning for Health, PMLR 158:75-96
[abs][Download PDF]
Prognosticating Colorectal Cancer Recurrence using an Interpretable Deep Multi-view Network
Danliang Ho, Iain Bee Huat Tan, Mehul Motani; Proceedings of Machine Learning for Health, PMLR 158:97-109
[abs][Download PDF]
MEDCOD: A Medically-Accurate, Emotive, Diverse, and Controllable Dialog System
Rhys Compton, Ilya Valmianski, Li Deng, Costa Huang, Namit Katariya, Xavier Amatriain, Anitha Kannan; Proceedings of Machine Learning for Health, PMLR 158:110-129
[abs][Download PDF]
Domain-guided Self-supervision of EEG Data Improves Downstream Classification Performance and Generalizability
Neeraj Wagh, Jionghao Wei, Samarth Rawal, Brent Berry, Leland Barnard, Benjamin Brinkmann, Gregory Worrell, David Jones, Yogatheesan Varatharajah; Proceedings of Machine Learning for Health, PMLR 158:130-142
[abs][Download PDF]
Deconfounding Temporal Autoencoder: Estimating Treatment Effects over Time Using Noisy Proxies
Milan Kuzmanovic, Tobias Hatt, Stefan Feuerriegel; Proceedings of Machine Learning for Health, PMLR 158:143-155
[abs][Download PDF]
3KG: Contrastive Learning of 12-Lead Electrocardiograms using Physiologically-Inspired Augmentations
Bryan Gopal, Ryan Han, Gautham Raghupathi, Andrew Ng, Geoff Tison, Pranav Rajpurkar; Proceedings of Machine Learning for Health, PMLR 158:156-167
[abs][Download PDF]
Image Classification with Consistent Supporting Evidence
Peiqi Wang, Ruizhi Liao, Daniel Moyer, Seth Berkowitz, Steven Horng, Polina Golland; Proceedings of Machine Learning for Health, PMLR 158:168-180
[abs][Download PDF]
Early Exit Ensembles for Uncertainty Quantification
Lorena Qendro, Alexander Campbell, Pietro Lio, Cecilia Mascolo; Proceedings of Machine Learning for Health, PMLR 158:181-195
[abs][Download PDF]
RadBERT-CL: Factually-Aware Contrastive Learning For Radiology Report Classification
Ajay Jaiswal, Liyan Tang, Meheli Ghosh, Justin F. Rousseau, Yifan Peng, Ying Ding; Proceedings of Machine Learning for Health, PMLR 158:196-208
[abs][Download PDF]
Retrieval-Based Chest X-Ray Report Generation Using a Pre-trained Contrastive Language-Image Model
Mark Endo, Rayan Krishnan, Viswesh Krishna, Andrew Y. Ng, Pranav Rajpurkar; Proceedings of Machine Learning for Health, PMLR 158:209-219
[abs][Download PDF]
Longitudinal patient stratification of electronic health records with flexible adjustment for clinical outcomes
Oliver Carr, Avelino Javer, Patrick Rockenschaub, Owen Parsons, Robert Durichen; Proceedings of Machine Learning for Health, PMLR 158:220-238
[abs][Download PDF]
CEHR-BERT: Incorporating temporal information from structured EHR data to improve prediction tasks
Chao Pang, Xinzhuo Jiang, Krishna S. Kalluri, Matthew Spotnitz, RuiJun Chen, Adler Perotte, Karthik Natarajan; Proceedings of Machine Learning for Health, PMLR 158:239-260
[abs][Download PDF]
End-to-End Sequential Sampling and Reconstruction for MRI
Tianwei Yin, Zihui Wu, He Sun, Adrian V. Dalca, Yisong Yue, Katherine L. Bouman; Proceedings of Machine Learning for Health, PMLR 158:261-281
[abs][Download PDF]
G-Net: a Recurrent Network Approach to G-Computation for Counterfactual Prediction Under a Dynamic Treatment Regime
Rui Li, Stephanie Hu, Mingyu Lu, Yuria Utsumi, Prithwish Chakraborty, Daby M. Sow, Piyush Madan, Jun Li, Mohamed Ghalwash, Zach Shahn, Li-wei Lehman; Proceedings of Machine Learning for Health, PMLR 158:282-299
[abs][Download PDF]
此内容由惯性聚合(RSS阅读器)自动聚合整理,仅供阅读参考。 原文来自 — 版权归原作者所有。