HiCu: Leveraging Hierarchy for Curriculum Learning in Automated ICD Coding

08/03/2022
by   Weiming Ren, et al.
0

There are several opportunities for automation in healthcare that can improve clinician throughput. One such example is assistive tools to document diagnosis codes when clinicians write notes. We study the automation of medical code prediction using curriculum learning, which is a training strategy for machine learning models that gradually increases the hardness of the learning tasks from easy to difficult. One of the challenges in curriculum learning is the design of curricula – i.e., in the sequential design of tasks that gradually increase in difficulty. We propose Hierarchical Curriculum Learning (HiCu), an algorithm that uses graph structure in the space of outputs to design curricula for multi-label classification. We create curricula for multi-label classification models that predict ICD diagnosis and procedure codes from natural language descriptions of patients. By leveraging the hierarchy of ICD codes, which groups diagnosis codes based on various organ systems in the human body, we find that our proposed curricula improve the generalization of neural network-based predictive models across recurrent, convolutional, and transformer-based architectures. Our code is available at https://github.com/wren93/HiCu-ICD.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/21/2022

In-sample Curriculum Learning by Sequence Completion for Natural Language Generation

Curriculum learning has shown promising improvements in multiple domains...
research
12/22/2022

Confidence-Aware Paced-Curriculum Learning by Label Smoothing for Surgical Scene Understanding

Curriculum learning and self-paced learning are the training strategies ...
research
10/20/2021

Knowledge-Guided Multiview Deep Curriculum Learning for Elbow Fracture Classification

Elbow fracture diagnosis often requires patients to take both frontal an...
research
08/22/2021

Spatial Transformer Networks for Curriculum Learning

Curriculum learning is a bio-inspired training technique that is widely ...
research
04/27/2022

Use All The Labels: A Hierarchical Multi-Label Contrastive Learning Framework

Current contrastive learning frameworks focus on leveraging a single sup...
research
08/30/2022

DLDNN: Deterministic Lateral Displacement Design Automation by Neural Networks

Size-based separation of bioparticles/cells is crucial to a variety of b...
research
12/01/2017

Intelligent EHRs: Predicting Procedure Codes From Diagnosis Codes

In order to submit a claim to insurance companies, a doctor needs to cod...

Please sign up or login with your details

Forgot password? Click here to reset