Selection of pseudo-annotated data for adverse drug reaction classification across drug groups

11/24/2021
by   Ilseyar Alimova, et al.
0

Automatic monitoring of adverse drug events (ADEs) or reactions (ADRs) is currently receiving significant attention from the biomedical community. In recent years, user-generated data on social media has become a valuable resource for this task. Neural models have achieved impressive performance on automatic text classification for ADR detection. Yet, training and evaluation of these methods are carried out on user-generated texts about a targeted drug. In this paper, we assess the robustness of state-of-the-art neural architectures across different drug groups. We investigate several strategies to use pseudo-labeled data in addition to a manually annotated train set. Out-of-dataset experiments diagnose the bottleneck of supervised models in terms of breakdown performance, while additional pseudo-labeled data improves overall results regardless of the text selection strategy.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/21/2021

NADE: A Benchmark for Robust Adverse Drug Events Extraction in Face of Negations

Adverse Drug Event (ADE) extraction models can rapidly examine large col...
research
09/06/2022

Increasing Adverse Drug Events extraction robustness on social media: case study on negation and speculation

In the last decade, an increasing number of users have started reporting...
research
04/21/2020

Domain-Guided Task Decomposition with Self-Training for Detecting Personal Events in Social Media

Mining social media content for tasks such as detecting personal experie...
research
09/06/2017

Semi-Supervised Recurrent Neural Network for Adverse Drug Reaction Mention Extraction

Social media is an useful platform to share health-related information d...
research
10/21/2022

Multimodal Model with Text and Drug Embeddings for Adverse Drug Reaction Classification

In this paper, we focus on the classification of tweets as sources of po...
research
07/20/2016

Refining adverse drug reaction signals by incorporating interaction variables identified using emergent pattern mining

Purpose: To develop a framework for identifying and incorporating candid...
research
05/24/2021

View Distillation with Unlabeled Data for Extracting Adverse Drug Effects from User-Generated Data

We present an algorithm based on multi-layer transformers for identifyin...

Please sign up or login with your details

Forgot password? Click here to reset