- ICH GCP
- 미국 임상 시험 레지스트리
- 임상시험 NCT07600541
Perceptions of Kidney Transplant Recipients Regarding the Role of Artificial Intelligence in Medicine (AITX)
연구 개요
상태
정황
상세 설명
# Study Summary
## Background
Kidney transplantation is currently the gold standard treatment for end-stage renal disease, with over 170,000 transplants performed each year worldwide. Despite major advances in short-term survival, long-term graft survival remains limited: approximately 40% of patients return to dialysis within 10 to 15 years following transplantation.
In recent years, artificial intelligence (AI) has emerged as a promising tool for predicting graft outcomes and supporting clinical decision-making. The iBox system, developed by the Paris Institute for Transplantation and Organ Regeneration, calculates a personalized probability of graft loss up to ten years after evaluation of the kidney transplant recipient.
This algorithm has been validated internationally across multiple cohorts and clinical trials, outperforms clinicians in predicting risk, and was qualified by the European Medicines Agency as an endpoint for clinical trials in 2022.
However, while the clinical value of the iBox and similar predictive tools is well documented, patient perceptions remain largely unexplored. Understanding how kidney transplant recipients perceive the prediction of their individual risk of graft loss (in terms of usefulness, acceptability, fears, or impact on their daily life), as well as their broader views on the role of artificial intelligence in medicine - including their hopes, expectations, and concerns about its deployment - is essential to ensure an ethical, transparent, and truly patient-centered implementation.
## Study period
January 2026: Distribution of the questionnaire to the collaborating transplant centers and patient associations. February 2026: Data collection and management. April 2026: Analysis of results. June 2026: Presentation and discussion of results with the various participating centers/associations. September 2026: Publication.
## Sample size
The questionnaire will be distributed to a sample of between 10,000 and 20,000 kidney transplant recipients. Based on response rates observed in comparable studies using patient questionnaires, an estimated response rate of 10% to 15% is expected, which would yield a sufficient volume of responses to ensure statistical robustness and diversity of represented profiles.
## Study type
Cross-sectional, international, and multicenter survey, conducted via an anonymized online questionnaire. The study adopts a mixed-methods approach, combining qualitative and quantitative analysis of responses. No medical or biological data will be used, nor will data collected during clinical care be reused.
- Questionnaire development:** The questionnaire was developed based on a review of the existing literature on patient perceptions of artificial intelligence and predictive medicine. An initial version of the questionnaire was developed and tested with four French patients. After adjustments, a bilingual translation was carried out by French-speaking and English-speaking collaborators. The final questionnaire was then shared with American patients for linguistic and cultural validation (**questionnaire presented in the appendix of this document**).
- Questionnaire distribution:** Distribution will be carried out through partner patient associations and collaborating transplant centers in France and the United States. The questionnaire will be distributed via a secure and anonymized REDCap platform, hosted on institutional servers compliant with data protection standards (GDPR). Participants will receive a unique link allowing them to access the online questionnaire directly. Participants will be able to respond at their own pace and discontinue their participation at any time without justification or consequence.
Data analysis:** The collected responses will be analyzed using a quantitative approach. Qualitative analyses will rely on thematic analysis assisted by large language models (LLMs). These models will automatically extract recurring themes, associated emotions, and nuances of perception in the free-text responses, using a standardized methodology developed by the investigators. This type of LLM-based thematic analysis was already successfully conducted in the investigators' group. To ensure reliability and scientific rigor, a systematic manual verification will be performed on a representative sub-sample of responses. This independent review will compare human and automated coding and refine the thematic categories.
Data collected
- Age
- Sex
- Year of last transplant
- Country of last transplant
- Transplant follow-up center
- Transplant rank
- Current occupation or last occupation held
- Perceptions of the role of AI in medicine
- Perceptions regarding a graft loss risk prediction system
- Data flow
Data will be collected via the REDCap platform (HDS-certified hosting, GDPR-compliant). The questionnaire is anonymous: no nominative or identifiable medical data will be collected. Each participant will receive a unique link generating an untraceable alphanumeric identifier. Data will be transferred from REDCap and stored in encrypted form on institutional servers. Access will be strictly limited to the project investigators (Marc Raynaud, Alexandre Loupy) and the data manager (Thibaut Thalamas) via secure authentication. Data analyses will be performed on an internal environment using R. Fully anonymized datasets may be archived for secondary research or scientific replicability purposes.
## Participant information
Participants will be contacted by email via their follow-up center, using contact databases already existing at these centers. The invitation message will briefly present the study and its sponsor, the Paris Institute for Transplantation and Organ Regeneration, as well as the responsible researchers. It will also contain an information notice outlining the study objectives, confidentiality procedures, and a direct link to the online questionnaire hosted on REDCap. Participation will be entirely voluntary, with no impact on medical follow-up or the relationship with the transplant team.
연구 유형
등록 (추정된)
연락처 및 위치
연구 장소
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Île-de-France Region
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Paris, Île-de-France Region, 프랑스, 75015
- 모병
- Le flambeau de la vie
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연락하다:
- Michel Baujard, MSc
- 전화번호: 06 71 19 86 27
- 이메일: leflambeaudelavie@gmail.com
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Paris, Île-de-France Region, 프랑스, 75015
- 모병
- Nice Pasteur
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연락하다:
- Nathalie Cerruti, MD
- 전화번호: +33 4 92 03 77 77
- 이메일: Cerruti.n@chu-nice.fr
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참여기준
자격 기준
공부할 수 있는 나이
- 성인
- 고령자
건강한 자원 봉사자를 받아들입니다
샘플링 방법
연구 인구
설명
Inclusion criteria
- Age ≥ 18 years
- Fluency in French or English
- Electronic consent given
Exclusion criteria
- Severe cognitive impairment preventing comprehension
- Technical inability to access the questionnaire
공부 계획
연구는 어떻게 설계됩니까?
디자인 세부사항
코호트 및 개입
그룹/코호트 |
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Vita move
Association of transplant recipients
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France rein pays de la loire
Association of patients with kidney disease
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France rein île de france
Association of patients with kidney disease
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France rein nord pas de calais
Association of patients with kidney disease
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Saint-Louis hospital
Hospital
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Nice Pasteur
Hospital
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Marseille hospital
hospital
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Lille
hospital
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The voice of the patient
Association of patients with kidney disease
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Utah university
hospital
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Mayo Clinic jacksonville
hospital
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연구는 무엇을 측정합니까?
주요 결과 측정
결과 측정 |
측정값 설명 |
기간 |
|---|---|---|
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Perceptions of patients about AI
기간: Baseline (corresponding to questionnaire administration)
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Perceptions of kidney transplant recipients regarding the use of artificial intelligence, assessed with a questionnaire
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Baseline (corresponding to questionnaire administration)
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2차 결과 측정
결과 측정 |
측정값 설명 |
기간 |
|---|---|---|
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Perceptions of patients about the use of a graft failure prediction system
기간: Baseline (corresponding to questionnaire administration)
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This study aims to explore the perceptions of kidney transplant recipients regarding the use of a graft loss risk prediction system, assessed with a questionnaire
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Baseline (corresponding to questionnaire administration)
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공동 작업자 및 조사자
간행물 및 유용한 링크
일반 간행물
- Divard G, Raynaud M, Tatapudi VS, Abdalla B, Bailly E, Assayag M, Binois Y, Cohen R, Zhang H, Ulloa C, Linhares K, Tedesco HS, Legendre C, Jouven X, Montgomery RA, Lefaucheur C, Aubert O, Loupy A. Comparison of artificial intelligence and human-based prediction and stratification of the risk of long-term kidney allograft failure. Commun Med (Lond). 2022 Nov 23;2(1):150. doi: 10.1038/s43856-022-00201-9.
- Young AT, Amara D, Bhattacharya A, Wei ML. Patient and general public attitudes towards clinical artificial intelligence: a mixed methods systematic review. Lancet Digit Health. 2021 Sep;3(9):e599-e611. doi: 10.1016/S2589-7500(21)00132-1.
- https://osf.io/preprints/psyarxiv/pnx9e_v1
- Fritsch SJ, Blankenheim A, Wahl A, Hetfeld P, Maassen O, Deffge S, Kunze J, Rossaint R, Riedel M, Marx G, Bickenbach J. Attitudes and perception of artificial intelligence in healthcare: A cross-sectional survey among patients. Digit Health. 2022 Aug 8;8:20552076221116772. doi: 10.1177/20552076221116772. eCollection 2022 Jan-Dec.
- Erul E, Aktekin Y, Danisman FB, Gumustas SA, Aktekin BS, Yekeduz E, Urun Y. Perceptions, Attitudes, and Concerns on Artificial Intelligence Applications in Patients with Cancer. Cancer Control. 2025 Jan-Dec;32:10732748251343245. doi: 10.1177/10732748251343245. Epub 2025 May 23.
- Truchot A, Raynaud M, Helantera I, Aubert O, Kamar N, Divard G, Astor B, Legendre C, Hertig A, Buchler M, Crespo M, Akalin E, Pujol GS, Ribeiro de Castro MC, Matas AJ, Ulloa C, Jordan SC, Huang E, Juric I, Basic-Jukic N, Coemans M, Naesens M, Friedewald JJ, Silva HT Jr, Lefaucheur C, Segev DL, Collins GS, Loupy A. Competing and Noncompeting Risk Models for Predicting Kidney Allograft Failure. J Am Soc Nephrol. 2025 Apr 1;36(4):688-701. doi: 10.1681/ASN.0000000517. Epub 2024 Oct 16.
- Lombardi Y, Raynaud M, Schatzl M, Mayer KA, Diebold M, Patel UD, Schrezenmeier E, Akifova A, Budde K, Loupy A, Bohmig GA. Estimating the efficacy of felzartamab to treat antibody-mediated rejection using the iBox prognostication system. Am J Transplant. 2025 May;25(5):1130-1132. doi: 10.1016/j.ajt.2024.12.004. Epub 2024 Dec 12. No abstract available.
- Loupy A, Preka E, Chen X, Wang H, He J, Zhang K. Reshaping transplantation with AI, emerging technologies and xenotransplantation. Nat Med. 2025 Jul;31(7):2161-2173. doi: 10.1038/s41591-025-03801-9. Epub 2025 Jul 14.
- Raynaud M, Aubert O, Divard G, Reese PP, Kamar N, Yoo D, Chin CS, Bailly E, Buchler M, Ladriere M, Le Quintrec M, Delahousse M, Juric I, Basic-Jukic N, Crespo M, Silva HT Jr, Linhares K, Ribeiro de Castro MC, Soler Pujol G, Empana JP, Ulloa C, Akalin E, Bohmig G, Huang E, Stegall MD, Bentall AJ, Montgomery RA, Jordan SC, Oberbauer R, Segev DL, Friedewald JJ, Jouven X, Legendre C, Lefaucheur C, Loupy A. Dynamic prediction of renal survival among deeply phenotyped kidney transplant recipients using artificial intelligence: an observational, international, multicohort study. Lancet Digit Health. 2021 Dec;3(12):e795-e805. doi: 10.1016/S2589-7500(21)00209-0. Epub 2021 Oct 28.
- Hart A, Gustafson SK, Wey A, Salkowski N, Snyder JJ, Kasiske BL, Israni AK. The association between loss of Medicare, immunosuppressive medication use, and kidney transplant outcomes. Am J Transplant. 2019 Jul;19(7):1964-1971. doi: 10.1111/ajt.15293. Epub 2019 Mar 5.
연구 기록 날짜
연구 주요 날짜
연구 시작 (실제)
기본 완료 (추정된)
연구 완료 (추정된)
연구 등록 날짜
최초 제출
QC 기준을 충족하는 최초 제출
처음 게시됨 (실제)
연구 기록 업데이트
마지막 업데이트 게시됨 (실제)
QC 기준을 충족하는 마지막 업데이트 제출
마지막으로 확인됨
추가 정보
이 연구와 관련된 용어
개별 참가자 데이터(IPD) 계획
개별 참가자 데이터(IPD)를 공유할 계획입니까?
IPD 계획 설명
약물 및 장치 정보, 연구 문서
미국 FDA 규제 의약품 연구
미국 FDA 규제 기기 제품 연구
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