# The Structure of Major Life Transitions Among Older Suicide Decedents: An Application of Large Language Models

**Authors:** Briana Mezuk, Viktoryia Kalesnikava, David Jurgens, Lily Johns, Kara Zivin

PMC · DOI: 10.1093/geroni/igaf122.1215 · 2025-12-31

## TL;DR

This study uses large language models to analyze life events preceding suicide among older adults, revealing patterns in health, family, and social issues that may contribute to suicide risk.

## Contribution

The study introduces the novel use of large language models to analyze the structure of life events in suicide narratives, offering new insights into suicide risk factors for older adults.

## Key findings

- Most suicide narratives involved interlinked health or family problems escalating days before death.
- Older adults aged 65+ often faced legal issues or relationship loss, while those under 65 faced employment or relationship issues.
- Preliminary results show LLMs can identify structural elements of life events in suicide narratives.

## Abstract

The role of life events in shaping suicide risk for older adults is unclear. Structure and meaning of events are interconnected: structure shapes the relationship between event elements (e.g., timing), with meaning emerging through their dynamic interactions. Large language models (LLM) provide an opportunity to analyze textual data at scale, but they have not yet been widely used to understand the contributing circumstances of suicide. In this study, we applied LLMs to narrative texts from the National Violent Death Reporting System (2003-2022), a nationwide registry of suicide deaths, to (1) identify salient events in the lives of suicide decedents aged 50 + (n = 164,240), (2) classify aspects of the structure of these events (e.g., timing, sequence, expectedness), and (3) explore variation by age. Mean age of decedents was 63 years, 24% were female, 88% were non-Hispanic White; 54% did not have a known mental health problem at the time of their death. Most narratives described sequences of life events involving interlinked health or family problems that often escalated days before suicide (e.g., mobility loss after a recent surgery); less frequently, narratives mentioned isolated events, referring to financial or relationship crises. For decedents aged 65+, events often involved legal issues or relationship loss (e.g., widowhood), while those aged <65 events typically related to employment or relationship discord. Preliminary analyses demonstrate the feasibility of identifying structural elements of life events using LLMs; next steps will include refining prompts to improve classification of complex transitions from these texts.

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Source: https://tomesphere.com/paper/PMC12762265