Open Access
CC BY 4.0 · Yearb Med Inform 2024; 33(01): 102
DOI: 10.1055/s-0044-1800728
Section 2: Cancer Informatics
Best Paper Selection – Content Summaries

Best Paper Selection

 

Appendix: Content Summaries of Selected Best Papers for the 2024 IMIA Yearbook, Section Cancer Informatics

Manz, Christopher R., Yichen Zhang, Kan Chen, Qi Long, Dylan S. Small, Chalanda N. Evans, Corey Chivers et al.

Long-term effect of machine learning-triggered behavioral nudges on serious illness conversations and end-of-life outcomes among patients with cancer: A randomized clinical trial.

JAMA oncology 9, no. 3 (2023): 414-418.

doi: 10.1001/jamaoncol.2022.6303

In this study the investigators evaluate the utility of a mortality prediction algorithm combined with behavioral nudges on end-of-life care among cancer patients. Using a randomized control trial including 20,506 patients with cancer across 9 clinical practices, participates who were identified as having an 10% or higher risk for death in 6 months were randomized to either receive behavioral nudges or standard of care. Behavioral nudges consisted of weekly emails, lists, and texts to clinicians prompting them to have serious illness conversations with high-risk patients. The authors found that their machine learning based behavioral intervention led to 10% increase in serious illness conversations and 3% decreasing use of end-of-life systemic therapy. This study is among the few randomized control trials of machine learning interventions within oncology. Additionally, the study represents a potential model for how to successfully implement medical informatics solutions through behavioral interventions.

Placido, D., Yuan, B., Hjaltelin, J.X., Zheng, C., Haue, A.D., Chmura, P.J., Yuan, C., Kim, J., Umeton, R., Antell, G. and Chowdhury, A.

A deep learning algorithm to predict risk of pancreatic cancer from disease trajectories.

Nature Medicine, 29(5), (2023), pp.1113-1122.

doi:10.1038/s41591-023-02332-5

The authors present a framework for predicting the risk of a rare cancer type by applying deep learning to a real-world longitudinal dataset of disease trajectories. Using longitudinal disease codes the investigators trained a deep learning model on 8,110,706 Danish patients (23,985 pancreatic cancers) and predicted the risk of developing cancer in time intervals ranging from 6-36 months. The model was validated on 2,962,383 US based patients (3,869 pancreatic cancers). The authors argue their model could be helpful in identifying high risk cohorts of patients who potentially could be screened more aggressively for rare cancer types. The authors model improved in performance when looking at larger intervals prior to cancer diagnosis suggesting longer disease histories do have value in predicting the risk of developing rare cancer types. Given the model input is administrative disease codes, it is likely able to be implemented at scale in a variety of clinical settings.



Die Autoren geben an, dass kein Interessenkonflikt besteht.

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Artikel online veröffentlicht:
08. April 2025

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