GASCADE: Grouped Summarization of Adverse Drug Event for Enhanced Cancer Pharmacovigilance
Sofia Jamil, Aryan Dabad, Bollampalli Areen Reddy, Sriparna Saha,, Rajiv Misra, Adil A. Shakur

TL;DR
This paper introduces GASCADE, a novel framework combining information extraction and summarization to improve the understanding of adverse drug events in cancer pharmacovigilance, supported by a new dataset and advanced alignment techniques.
Contribution
The work presents the first application of alignment techniques like Direct Preference Optimization to encoder-decoder models for ADE summarization in cancer, along with a new dataset and a multitask pipeline.
Findings
GASCADE outperforms baseline models on multiple metrics.
Human evaluations confirm the quality of summaries.
The dataset and code are publicly available.
Abstract
In the realm of cancer treatment, summarizing adverse drug events (ADEs) reported by patients using prescribed drugs is crucial for enhancing pharmacovigilance practices and improving drug-related decision-making. While the volume and complexity of pharmacovigilance data have increased, existing research in this field has predominantly focused on general diseases rather than specifically addressing cancer. This work introduces the task of grouped summarization of adverse drug events reported by multiple patients using the same drug for cancer treatment. To address the challenge of limited resources in cancer pharmacovigilance, we present the MultiLabeled Cancer Adverse Drug Reaction and Summarization (MCADRS) dataset. This dataset includes pharmacovigilance posts detailing patient concerns regarding drug efficacy and adverse effects, along with extracted labels for drug names, adverse…
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Taxonomy
TopicsPharmacovigilance and Adverse Drug Reactions · Biomedical Text Mining and Ontologies · Computational Drug Discovery Methods
MethodsGated Linear Unit · Refunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Byte Pair Encoding · Attention Dropout · Softmax · Residual Connection · Linear Layer · Inverse Square Root Schedule · Multi-Head Attention
