TSAssistant: A Human-in-the-Loop Agentic Framework for Automated Target Safety Assessment

arXiv cs.CL / 4/28/2026

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Key Points

  • TSAssistant is introduced as a multi-agent, human-in-the-loop framework to help automate Target Safety Assessment (TSA) report drafting by handling iterative, expert-driven evidence integration across multiple data types.
  • The system decomposes report generation into modular, section-specific subagents that retrieve genetic, transcriptomic, homology, pharmacological, and clinical evidence (plus literature) via standardized tool interfaces, producing sections that can be individually cited.
  • TSAssistant uses a hierarchical instruction setup (system prompts, domain skill modules, and user/runtime instructions) to control agent behavior and align outputs with TSA report structure.
  • A key capability is an interactive refinement loop where users can edit or add content, upload new sources, and re-run agents for particular sections while the system preserves conversational memory across iterations.
  • The overall goal is to reduce the manual burden of evidence synthesis and drafting while keeping toxicologists as the final decision authority.

Abstract

Target Safety Assessment (TSA) requires systematic integration of heterogeneous evidence, including genetic, transcriptomic, target homology, pharmacological, and clinical data, to evaluate potential safety liabilities of therapeutic targets. This process is inherently iterative and expert-driven, posing challenges in scalability and reproducibility. We present TSAssistant, a multi-agent framework designed to support TSA report drafting through a modular, section-based, and human-in-the-loop paradigm. The framework decomposes report generation into a coordinated pipeline of specialised subagents, each targeting a single TSA section. Specialised subagents retrieve structured and unstructured data as well as literature evidence from curated biomedical sources through standardised tool interfaces, producing individually citable, evidence-grounded sections. Agent behaviour is governed by a hierarchical instruction architecture comprising system prompts, domain-specific skill modules, and runtime user instructions. A key feature is an interactive refinement loop in which users may manually edit sections, append new information, upload additional sources, or re-invoke agents to revise specific sections, with the system maintaining conversational memory across iterations. TSAssistant is designed to reduce the mechanical burden of evidence synthesis and report drafting, supporting a hybrid model in which agentic AI augments evidence synthesis while toxicologists retain final decision authority.