Learning to Select the Best Forecasting Tasks for Clinical Outcome Prediction

被引:0
|
作者
Xue, Yuan [1 ]
Du, Nan [1 ]
Mottram, Anne [1 ]
Seneviratne, Martin [1 ]
Dai, Andrew M. [1 ]
机构
[1] Google, Mountain View, CA 94035 USA
关键词
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The paradigm of 'pretraining' from a set of relevant auxiliary tasks and then 'finetuning' on a target task has been successfully applied in many different domains. However, when the auxiliary tasks are abundant, with complex relationships to the target task, using domain knowledge or searching over all possible pretraining setups is inefficient and suboptimal. To address this challenge, we propose a method to automatically select from a large set of auxiliary tasks, which yields a representation most useful to the target task. In particular, we develop an efficient algorithm that uses automatic auxiliary task selection within a nested-loop meta-learning process. We have applied this algorithm to the task of clinical outcome predictions in electronic medical records, learning from a large number of self-supervised tasks related to forecasting patient trajectories. Experiments on a real clinical dataset demonstrate the superior predictive performance of our method compared to direct supervised learning, naive pretraining and simple multitask learning, in particular in low-data scenarios when the primary task has very few examples. With detailed ablation analysis, we further show that the selection rules are interpretable and able to generalize to unseen target tasks with new data.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Earthquake Forecasting and Earthquake Prediction: Different Approaches for Obtaining the Best Model
    Marzocchi, Warner
    Zechar, J. Douglas
    SEISMOLOGICAL RESEARCH LETTERS, 2011, 82 (03) : 442 - 448
  • [22] Quantifying the Hardness of Bioactivity Prediction Tasks for Transfer Learning
    Fooladi, Hosein
    Hirte, Steffen
    Kirchmair, Johannes
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2024, 64 (10) : 4031 - 4046
  • [23] Machine Learning Algorithm for Survival Prediction Linked to Clinical Outcome of Serous Ovarian Cancer
    Zhurman, Varvara N.
    Plekhova, N. G.
    Chernenko, I. N.
    SOFTWARE ENGINEERING PERSPECTIVES IN SYSTEMS, VOL. 1, 2022, 501 : 632 - 643
  • [24] Outcome Prediction in Clinical Treatment Processes
    Huang, Zhengxing
    Dong, Wei
    Ji, Lei
    Duan, Huilong
    JOURNAL OF MEDICAL SYSTEMS, 2016, 40 (01) : 1 - 13
  • [25] Prediction of clinical outcome in islet allotransplantation
    Bertuzzi, Federico
    Ricordi, Camillo
    DIABETES CARE, 2007, 30 (02) : 410 - 417
  • [26] Outcome Prediction in Clinical Treatment Processes
    Zhengxing Huang
    Wei Dong
    Lei Ji
    Huilong Duan
    Journal of Medical Systems, 2016, 40
  • [27] Enhanced Flood Forecasting: Revolutionizing Prediction with Federated Learning
    Nahak, Sunil Kumar
    Acharya, Sanjit Kumar
    Padhy, Dushmant
    SMART TRENDS IN COMPUTING AND COMMUNICATIONS, VOL 2, SMARTCOM 2024, 2024, 946 : 457 - 467
  • [28] The present and future of seizure detection, prediction, and forecasting with machine learning, including the future impact on clinical trials
    Kerr, Wesley T.
    Mcfarlane, Katherine N.
    Pucci, Gabriela Figueiredo
    FRONTIERS IN NEUROLOGY, 2024, 15
  • [29] Clinical outcome study of dysferlinopathy: what are the best outcome measures for dysferlinopathy patients?
    James, M.
    Jacobs, M.
    Mayhew, A.
    Feng, J.
    Spuler, S.
    Day, J.
    Jones, K.
    Bharucha-Goebel, D.
    Salort-Campana, E.
    Pestronk, A.
    Walter, M.
    Paradas, C.
    Stojkovic, T.
    Mori-Yoshimura, M.
    Bravver, E.
    Diaz-Manera, J.
    Pegoraro, E.
    Mendell, J.
    Bushby, K.
    Straub, V.
    NEUROMUSCULAR DISORDERS, 2017, 27 : S227 - S227
  • [30] Making the Best Match: Selecting Outcome Measures for Clinical Trials and Outcome Studies
    Coster, Wendy J.
    AMERICAN JOURNAL OF OCCUPATIONAL THERAPY, 2013, 67 (02): : 162 - 170