Stratification of Length of Stay Prediction following Surgical Cytoreduction in Advanced High-Grade Serous Ovarian Cancer Patients Using Artificial Intelligence; the Leeds L-AI-OS Score

Author:

Laios AlexandrosORCID,De Freitas Daniel Lucas DantasORCID,Saalmink GwendolynORCID,Tan Yong Sheng,Johnson RachealORCID,Zubayraeva Albina,Munot Sarika,Hutson RichardORCID,Thangavelu Amudha,Broadhead Tim,Nugent David,Kalampokis EvangelosORCID,de Lima Kassio Michell Gomes,Theophilou Georgios,De Jong DiederickORCID

Abstract

(1) Background: Length of stay (LOS) has been suggested as a marker of the effectiveness of short-term care. Artificial Intelligence (AI) technologies could help monitor hospital stays. We developed an AI-based novel predictive LOS score for advanced-stage high-grade serous ovarian cancer (HGSOC) patients following cytoreductive surgery and refined factors significantly affecting LOS. (2) Methods: Machine learning and deep learning methods using artificial neural networks (ANN) were used together with conventional logistic regression to predict continuous and binary LOS outcomes for HGSOC patients. The models were evaluated in a post-hoc internal validation set and a Graphical User Interface (GUI) was developed to demonstrate the clinical feasibility of sophisticated LOS predictions. (3) Results: For binary LOS predictions at differential time points, the accuracy ranged between 70–98%. Feature selection identified surgical complexity, pre-surgery albumin, blood loss, operative time, bowel resection with stoma formation, and severe postoperative complications (CD3–5) as independent LOS predictors. For the GUI numerical LOS score, the ANN model was a good estimator for the standard deviation of the LOS distribution by ± two days. (4) Conclusions: We demonstrated the development and application of both quantitative and qualitative AI models to predict LOS in advanced-stage EOC patients following their cytoreduction. Accurate identification of potentially modifiable factors delaying hospital discharge can further inform services performing root cause analysis of LOS.

Publisher

MDPI AG

Reference56 articles.

1. Cancer statistics;CA Cancer J. Clin.,2019

2. Fast track surgery versus conventional recovery strategies for colorectal surgery;Cochrane Database Syst. Rev.,2011

3. PROFAST: A randomised trial implementing enhanced recovery after surgery for highcomplexity advanced ovarian cancer surgery;Eur. J. Cancer,2020

4. In-hospital length of stay after major surgical oncological procedures;Eur. J. Surg. Oncol.,2018

5. Length of stay: An appropriate quality measure?;Arch. Surg.,2007

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