Last reviewed · How we verify
NCT04966598
Machine Learning Predict Acute Kidney Injury in Patients Following Cardiac Surgery
trial in Machine Learning in 2,108 participants. Completed in 1 January 2021.
1 January 2021
Quick facts
| Lead sponsor | Yunlong Fan |
|---|---|
| Status | Completed |
| Study type | OBSERVATIONAL |
| Enrollment | 2,108 |
| Start date | 1 September 2020 |
| Primary completion | 1 January 2021 |
| Estimated completion | 1 January 2021 |
| Sites | 1 location across China |
Conditions studied
- Machine Learning — all drugs for Machine Learning →
- Acute Kidney Injury — all drugs for Acute Kidney Injury →
Sponsor
Yunlong Fan
Who can join
18 and older, any sex, with Machine Learning or Acute Kidney Injury. Patients with the condition only — healthy volunteers not accepted.
Sponsor's own description
Cardiac surgery-associated acute kidney injury (CSA-AKI) is a major complication which may result in adverse impact on short- and long-term mortality. The investigatorshere developed several prediction models based on machine learning technique to allow early identification of patients who at the high risk of unfavorable kidney outcomes. The retrospective study comprised 2108 consecutive patients who underwent cardiac surgery from January 2017 to December 2020.
Publications & conference data
2 peer-reviewed publications reference this trial (live from Europe PMC):
-
Big Data in cardiac surgery: real world and perspectives.
Montisci A, Palmieri V, Vietri MT, Sala S, et al · · 2022 · cited 8× · PMID 36309702 · DOI 10.1186/s13019-022-02025-z -
Development, External Validation, and Visualization of Machine Learning Models for Predicting Occurrence of Acute Kidney Injury after Cardiac Surgery.
Shao J, Liu F, Ji S, Song C, et al · · 2023 · cited 7× · PMID 39076716 · DOI 10.31083/j.rcm2408229
Verify or expand the search:
- PubMed search for NCT04966598
- Europe PMC full search
- ASCO Meeting Library
- ESMO Meeting Library
- bioRxiv preprints
- medRxiv preprints
- Google Scholar
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Other Yunlong Fan trials
Trials by the same sponsor.
- NCT05126771 — Learning Curve of Aortic Arch Replacement Surgery in Chinese Mainland With Stanford Type A Aortic Dissection · completed
- NCT05106582 — Assessment of the Learning Curve of Total Thoracoscopic Mitral Valve Repair · completed
- NCT05151536 — Effects of Different Doses of Epinephrine on Biomarkers of Nervous System Ischemia-reperfusion Injury in Patients With S · completed
Verify against primary sources
- ClinicalTrials.gov — authoritative US registry record
- WHO ICTRP — international registry index
- EU Clinical Trials Register
- Sponsor press releases (Google)
- Trial protocol + status: ClinicalTrials.gov NCT04966598 (US National Library of Medicine, public domain)
- Publications: Europe PMC API search by NCT ID, retrieved 10 June 2026
- Drug + disease cross-links: matched in real time against Drug Landscape's normalised drug + company + condition tables
- Sponsor: as reported to ClinicalTrials.gov by Yunlong Fan
- Last refreshed: 22 July 2021
Drug Landscape aggregates and links these public records for informational use only. Always verify against the primary source before clinical or regulatory decisions. Canonical URL: https://druglandscape.com/trial/NCT04966598.
Primary sources · FDA · ClinicalTrials.gov · EMA · SEC EDGAR · ChEMBL · Wikidata · full sourcing