Submitted:
10 October 2025
Posted:
11 October 2025
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Abstract
Keywords:
1. Introduction
2. Materials and Methods
Clinical Trials Lay Summary Selection and Cohort
GAI-assisted Clinical Trial Lay Summary Generation
Readability Scores, Grade Level Indicators and Text Metrics
Brief Summaries Completeness Assessment
Statistical Analysis
3. Results
Readability and Text Metrics Comparison
Content Coverage of Publicly Available vs. GAI-Generated Brief Summaries
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
| GAI | Generative Artificial Intelligence |
| AMA | American Medical Association |
| EU | European Union |
| BRIDGE-AI | Bridging Readable and Informative Dissemination with GenerativE Artificial Intelligence |
| RSs | Readability Scores |
| GILs | Grade Level Indicators |
| TMs | Text Metrics |
References
- Ganjavi C, Eppler MB, Ramacciotti LS, Cacciamani GE. Clinical Patient Summaries Not Fit for Purpose: A Study in Urology. European Urology Focus. 2023;9(6):1068-71.
- Weis B. Health literacy: a manual for clinicians. American Medical Association Foundation and American Medical Association. 2003. 2024.
- European C. Communication from the Commission to the Council, the European Parliament, the Economic and Social Committee and the Committee of the Regions - eEurope 2002: Quality Criteria for Health related Websites. Brussels: European Commission; 2002.
- Alzghaibi H. People behavioral during health information searching in COVID-19 era: a review. Front Public Health. 2023;11:1166639.
- Suarez-Lledo V, Alvarez-Galvez J. Prevalence of Health Misinformation on Social Media: Systematic Review. J Med Internet Res. 2021;23(1):e17187.
- ClinicalTrials.gov. Plain Language Guide: How to Write Your Brief Summary (ClinicalTrials.gov). 2025.
- Shiely F, Daly A. Trial lay summaries were not fit for purpose. J Clin Epidemiol. 2023;156:105-12.
- Kharko A, Locher C, Torous J, Rosch SA, Hägglund M, Gaab J, et al. Generative artificial intelligence in medicine: a mixed-methods survey of UK general practitioners. BMJ Digital Health & AI. 2025;1(1):e000051.
- Davis R, Eppler M, Ayo-Ajibola O, Loh-Doyle JC, Nabhani J, Samplaski M, et al. Evaluating the Effectiveness of Artificial Intelligence-powered Large Language Models Application in Disseminating Appropriate and Readable Health Information in Urology. J Urol. 2023;210(4):688-94.
- Eppler MB, Ganjavi C, Knudsen JE, Davis RJ, Ayo-Ajibola O, Desai A, et al. Bridging the Gap Between Urological Research and Patient Understanding: The Role of Large Language Models in Automated Generation of Layperson's Summaries. Urol Pract. 2023;10(5):436-43.
- Hershenhouse JS, Mokhtar D, Eppler MB, Rodler S, Storino Ramacciotti L, Ganjavi C, et al. Accuracy, readability, and understandability of large language models for prostate cancer information to the public. Prostate Cancer Prostatic Dis. 2024.
- Rinderknecht EA-O, Schmelzer A, Kravchuk AA-O, Goßler CA-O, Breyer J, Gilfrich CA-O, et al. Leveraging Large Language Models for High-Quality Lay Summaries: Efficacy of ChatGPT-4 with Custom Prompts in a Consecutive Series of Prostate Cancer Manuscripts. LID - 10.3390/curroncol32020102 [doi] LID - 102. (1718-7729 (Electronic)).
- Ganjavi C, Layne E, Cei F, Gill K, Magoulianitis V, Abreu A, et al. Enhancing Readability of Lay Abstracts and Summaries for Urologic Oncology Literature Using Generative Artificial Intelligence: BRIDGE-AI 6 Randomized Controlled Trial. JCO Clin Cancer Inform. 2025;9:e2500042.
- Ramacciotti LA-O, Cei F, Hershenhouse JS, Mokhtar D, Rodler S, Gill K, et al. Generative Artificial Intelligence Platform for Automating Social Media Posts From Urology Journal Articles: A Cross-Sectional Study and Randomized Assessment. (1527-3792 (Electronic)).
- Layne E, Hussari T, Cacciamani GE. Letter: Quality and Readability of Online Health Information on Common Urologic Cancers: Assessing Barriers to Health Literacy in Urologic Oncology. Urology Practice. 2025;12(1):18-9.
- Loeb S, Byrne N, Teoh J. Does Dr Google give good advice about prostate cancer? BJU international. 2019;124(4):548-9.
- Loeb S, Taylor J, Borin JF, Mihalcea R, Perez-Rosas V, Byrne N, et al. Fake News: Spread of Misinformation about Urological Conditions on Social Media. Eur Urol Focus. 2020;6(3):437-9.


| Publicly-available Brief Summaries | GAI-generated Brief Summaries | P - Value | |||
| Readability Scores | mean (SD) | Median (IQR) | mean (SD) | Median (IQR) | |
| Flesch Kincaid Reading Ease | 17.0 (13.1) | 17.2 [5.4 - 23.9] | 73.3 (3.5) | 74.2 [72.1 - 75.1] | p <.0001 |
| Flesch Kincaid Grade Level | 18.2 (3.8) | 17.8 [15.4 - 21.8] | 7.0 (0.5) | 7.1 [6.7 - 7.3] | p <.0001 |
| Gunning Fog Score | 15.7 (1.7) | 15.6 [14.9 - 16.6] | 10.1 (0.8) | 10.0 [9.6 - 10.6] | p <.0001 |
| Smog Index | 20.8 (3.5) | 20.6 [18.3 - 24.0] | 8.3 (0.6) | 8.3 [7.9 - 8.6] | p <.0001 |
| Coleman Liau Index | 14.8 (2.4) | 14.9 [13.6 - 16.9] | 5.8 (0.7) | 5.7 [5.4 - 6.3] | p <.0001 |
| Automated Readability Index | 18.4 (5.0) | 17.0 [15.0 - 23.7] | 7.4 (0.7) | 7.3 [7.0 - 7.9] | p <.0001 |
| Text Metrics | |||||
| Sentences | 5.1 (4.3) | 3.0 [2.0 - 7.0] | 34.4 (5.8) | 33.5 [31.0 - 37.5] | p <.0001 |
| Words | 120.3 (81.9) | 96.0 [63.0 - 155.0] | 551.1 (76.2) | 550.5 [498.5 - 581.5] | p <.0001 |
| Complex Words | 28.8 (21.0) | 25.0 [15.0 - 37.0] | 32.8 (9.7) | 29.5 [25.5 - 40.0] | 0.0903 |
| % Of Complex Word | 23.9 (5.5) | 23.3 [19.5 - 26.9] | 6.0 (1.8) | 5.9 [4.6 - 7.0] | p <.0001 |
| Average Words Per Sentence | 29.3 (9.8) | 26.3 [22.1 - 38.0] | 16.2 (1.4) | 16.2 [15.2 - 16.7] | p <.0001 |
| Average Syllables Per Word | 1.9 (0.1) | 1.9 [1.8 - 1.9] | 1.4 (0.0) | 1.4 [1.4 - 1.4] | p <.0001 |
|
Publicly-available Brief Summaries |
GAI-generated Brief Summaries |
P - Value | ||
| STUDY OVERVIEW | Description, No. (%) | 15 (75) | 20 (100) | 0.05 |
| Conditions, No. (%) | 19 (95) | 20 (100) | 1.00 | |
| ELIGIBILITY CRITERIA | Inclusion Criteria, No. (%) | 16 (80) | 20 (100) | 0.11 |
| Exclusion Criteria, No. (%) | 0 (0) | 19 (100)* | <.0001 | |
| STUDY PLAN | Design Details, No. (%) | 12 (60) | 20 (100) | 0.0033 |
| Arms and Interventions, No. (%) | 12 (60) | 20 (100) | 0.0033 | |
| Primary Outcome Measures, No. (%) | 16 (80) | 20 (100) | 0.11 | |
| Secondary Outcome Measures, No. (%) | 12 (60) | 20 (100) | 0.0033 |
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