Saved in:
Bibliographic Details
Main Authors: You, Weiqiu, Goldberg, Cassandra, Madani, Amin, Hashimoto, Daniel A., Wong, Eric
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.22156
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917431771922432
author You, Weiqiu
Goldberg, Cassandra
Madani, Amin
Hashimoto, Daniel A.
Wong, Eric
author_facet You, Weiqiu
Goldberg, Cassandra
Madani, Amin
Hashimoto, Daniel A.
Wong, Eric
contents Purpose: Accurate assessment of the Critical View of Safety (CVS) during laparoscopic cholecystectomy is essential to prevent bile duct injury, a complication associated with significant morbidity and mortality. While large vision-language models (LVLMs) offer flexible reasoning, their predictions remain difficult to audit and unreliable on safety-critical surgical tasks. Methods: We introduce Sum-of-Checks, a framework that decomposes each CVS criterion into expert-defined reasoning checks reflecting clinically relevant visual evidence. Given a laparoscopic frame, an LVLM evaluates each check, producing a binary judgment and justification. Criterion-level scores are computed via fixed, weighted aggregation of check outcomes. We evaluate on the Endoscapes2023 benchmark using three frontier LVLMs, comparing against direct prompting, chain-of-thought, and sub-question decomposition, each with and without few-shot examples. Results: Sum-of-Checks improves average frame-level mean average precision by 12--14% relative to the best baseline across all three models and criteria. Analysis of individual checks reveals that LVLMs are reliable on observational checks (e.g., visibility, tool obstruction) but show substantial variability on decision-critical anatomical evidence. Conclusion: Structuring surgical reasoning into expert-aligned verification checks improves both accuracy and transparency of LVLM-based CVS assessment, demonstrating that explicitly separating evidence elicitation from decision-making is critical for reliable and auditable surgical AI systems. Code is available at https://github.com/BrachioLab/SumOfChecks.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22156
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Sum-of-Checks: Structured Reasoning for Surgical Safety with Large Vision-Language Models
You, Weiqiu
Goldberg, Cassandra
Madani, Amin
Hashimoto, Daniel A.
Wong, Eric
Machine Learning
Computer Vision and Pattern Recognition
Purpose: Accurate assessment of the Critical View of Safety (CVS) during laparoscopic cholecystectomy is essential to prevent bile duct injury, a complication associated with significant morbidity and mortality. While large vision-language models (LVLMs) offer flexible reasoning, their predictions remain difficult to audit and unreliable on safety-critical surgical tasks. Methods: We introduce Sum-of-Checks, a framework that decomposes each CVS criterion into expert-defined reasoning checks reflecting clinically relevant visual evidence. Given a laparoscopic frame, an LVLM evaluates each check, producing a binary judgment and justification. Criterion-level scores are computed via fixed, weighted aggregation of check outcomes. We evaluate on the Endoscapes2023 benchmark using three frontier LVLMs, comparing against direct prompting, chain-of-thought, and sub-question decomposition, each with and without few-shot examples. Results: Sum-of-Checks improves average frame-level mean average precision by 12--14% relative to the best baseline across all three models and criteria. Analysis of individual checks reveals that LVLMs are reliable on observational checks (e.g., visibility, tool obstruction) but show substantial variability on decision-critical anatomical evidence. Conclusion: Structuring surgical reasoning into expert-aligned verification checks improves both accuracy and transparency of LVLM-based CVS assessment, demonstrating that explicitly separating evidence elicitation from decision-making is critical for reliable and auditable surgical AI systems. Code is available at https://github.com/BrachioLab/SumOfChecks.
title Sum-of-Checks: Structured Reasoning for Surgical Safety with Large Vision-Language Models
topic Machine Learning
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2604.22156