본문으로 건너뛰기
← 뒤로

Machine learning approaches to early detection of delayed wound healing following gastric cancer surgery.

1/5 보강
World journal of gastrointestinal oncology 📖 저널 OA 100% 2024: 14/14 OA 2025: 188/188 OA 2026: 44/44 OA 2024~2026 2026 Vol.18(1) p. 114499
Retraction 확인
출처

Kirkik D, Ozadenc HM, Kalkanli Tas S

📝 환자 설명용 한 줄

Delayed wound healing following radical gastrectomy remains an important yet underappreciated complication that prolongs hospitalization, increases costs, and undermines patient recovery.

이 논문을 인용하기

↓ .bib ↓ .ris
APA Kirkik D, Ozadenc HM, Kalkanli Tas S (2026). Machine learning approaches to early detection of delayed wound healing following gastric cancer surgery.. World journal of gastrointestinal oncology, 18(1), 114499. https://doi.org/10.4251/wjgo.v18.i1.114499
MLA Kirkik D, et al.. "Machine learning approaches to early detection of delayed wound healing following gastric cancer surgery.." World journal of gastrointestinal oncology, vol. 18, no. 1, 2026, pp. 114499.
PMID 41607759 ↗

Abstract

Delayed wound healing following radical gastrectomy remains an important yet underappreciated complication that prolongs hospitalization, increases costs, and undermines patient recovery. In An 's recent study, the authors present a machine learning-based risk prediction approach using routinely available clinical and laboratory parameters. Among the evaluated algorithms, a decision tree model demonstrated excellent discrimination, achieving an area under the curve of 0.951 in the validation set and notably identifying all true cases of delayed wound healing at the Youden index threshold. The inclusion of variables such as drainage duration, preoperative white blood cell and neutrophil counts, alongside age and sex, highlights the pragmatic appeal of the model for early postoperative monitoring. Nevertheless, several aspects warrant critical reflection, including the reliance on a postoperative variable (drainage duration), internal validation only, and certain reporting inconsistencies. This letter underscores both the promise and the limitations of adopting interpretable machine learning models in perioperative care. We advocate for transparent reporting, external validation, and careful consideration of clinically actionable timepoints before integration into practice. Ultimately, this work represents a valuable step toward precision risk stratification in gastric cancer surgery, and sets the stage for multicenter, prospective evaluations.

🏷️ 키워드 / MeSH 📖 같은 키워드 OA만

같은 제1저자의 인용 많은 논문 (2)

🏷️ 같은 키워드 · 무료전문 — 이 논문 MeSH/keyword 기반

🟢 PMC 전문 열기