# PARQ: A Complexity-Consensus Aware Automatic Assessment of Motor Disease Severity in Parkinson’s Disease

**Authors:** Isha Chakraborty, Kaitlyn Trushenski, Salman Siddique Khan, Yutong Taneff, Arjun Tarakad, Charenya Anandan, Steven Thomas Bellows, Abdullah Yasir Yilmaz, Guha Balakrishnan, Nora Vanegas-Arroyave, Ashutosh Sabharwal

PMC · DOI: 10.21203/rs.3.rs-8694861/v1 · Research Square · 2026-02-09

## TL;DR

PARQ is a deep learning platform that automatically assesses Parkinson’s Disease severity from clinical videos, improving accuracy and reducing reliance on expert ratings.

## Contribution

PARQ introduces a novel method to estimate both motor severity and expert rating distributions, addressing inter-rater variability in Parkinson’s assessments.

## Key findings

- PARQ achieves 90% accuracy on high-consensus tasks and 80% on low-consensus tasks.
- The platform provides task-specific, distribution-aware severity estimates for MDS-UPDRS-III tasks.
- It reduces variability caused by rater disagreement in motor disease severity assessments.

## Abstract

Parkinson’s Disease (PD) is the fastest growing neurodegenerative disease, creating an urgent need for scalable objective clinical approaches to assess and monitor cardinal PD features (bradykinesia, rigidity, tremor, and gait dysfunction). Currently, the evaluation of PD features relies on expert assessments using the Movement Disorders Society - Unified Parkinson’s Disease Rating Scale part III (MDS-UPDRS-III), which provides a standardized framework for quantifying motor disease severity. However, this approach relies on the availability and expertise of trained clinicians, limiting scalability and introducing variability related to the experience of the raters and task-specific complexity. Inter-rater variability arises from a fundamental consensus-complexity tradeoff inherent to visually rated motor tasks: tasks with less visual cues tend to elicit lower inter-rater variability (greater rater agreement) whereas tasks with more visual cues are associated with greater disagreement. To address these challenges, we introduce PARQ, a deep learning based platform to automatically quantify PD motor disease severity from routine clinical videos. Rather than predicting a single severity score, PARQ estimates both the expected motor severity and the underlying distribution of expert ratings, enabling task-specific, consensus-aware motor severity prediction. We evaluate PARQ on a clinical dataset of 48 patients across 8 tasks with three independent expert ratings per video. PARQ achieves 90% accuracy on high-consensus tasks and 80% on low-consensus tasks, demonstrating robustness to systematic rater disagreement. PARQ delivers task-specific, distribution-aware severity estimates across most visually rated MDS-UPDRS-III tasks, offering a foundation for objective PD motor disease severity assessment.

## Linked entities

- **Diseases:** Parkinson’s Disease (MONDO:0005180)

## Full-text entities

- **Genes:** NR1I2 (nuclear receptor subfamily 1 group I member 2) [NCBI Gene 8856] {aka BXR, ONR1, PAR, PAR1, PAR2, PARq}
- **Diseases:** motor impairment (MESH:D000068079), Movement (MESH:D009069), rigidity (MESH:D009127), bradykinesia (MESH:D018476), tremor (MESH:D014202), gait dysfunction (MESH:D020233), tumor (MESH:D009369), PD (MESH:D010300), neurodegenerative (MESH:D019636), Disease (MESH:D004194)
- **Chemicals:** dopaminergic (MESH:D004298)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12919190/full.md

## References

33 references — full list in the complete paper: https://tomesphere.com/paper/PMC12919190/full.md

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Source: https://tomesphere.com/paper/PMC12919190