Abstract

Data analytics and artificial intelligence (AI) have been used to predict patient outcomes after colorectal cancer surgery. A prospectively maintained colorectal cancer database was used, covering 4336 patients who underwent colorectal cancer surgery between 2003 and 2019. The 47 patient parameters included demographics, peri- and post-operative outcomes, surgical approaches, complications, and mortality. Data analytics were used to compare the importance of each variable and AI prediction models were built for length of stay (LOS), readmission, and mortality. Accuracies of at least 80% have been achieved. The significant predictors of LOS were age, ASA grade, operative time, presence or absence of a stoma, robotic or laparoscopic approach to surgery, and complications. The model with support vector regression (SVR) algorithms predicted the LOS with an accuracy of 83% and mean absolute error (MAE) of 9.69 days. The significant predictors of readmission were age, laparoscopic procedure, stoma performed, preoperative nodal (N) stage, operation time, operation mode, previous surgery type, LOS, and the specific procedure. A BI-LSTM model predicted readmission with 87.5% accuracy, 84% sensitivity, and 90% specificity. The significant predictors of mortality were age, ASA grade, BMI, the formation of a stoma, preoperative TNM staging, neoadjuvant chemotherapy, curative resection, and LOS. Classification predictive modelling predicted three different colorectal cancer mortality measures (overall mortality, and 31- and 91-days mortality) with 80–96% accuracy, 84–93% sensitivity, and 75–100% specificity. A model using all variables performed only slightly better than one that used just the most significant ones.

Highlights

  • Colorectal cancer is the third most common cancer by incidence, with over 1.8 million new cases in 2018, and the second most common cause of cancer death when the sexes are combined [1]

  • This study has investigated the scope of artificial intelligence (AI) and data analytics in predicting length of stay (LOS), readmission and mortality in colorectal cancer patient’s treated in a large National Health Service (NHS) trust

  • Data analysis of different variables for LOS shows that age groups, ASA grade, whether a robotic surgery was performed or not, whether a laparoscopic operation was performed or not, operation mode and complications all have a significant impact in LOS prediction

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Summary

Introduction

Colorectal cancer is the third most common cancer by incidence, with over 1.8 million new cases in 2018, and the second most common cause of cancer death when the sexes are combined [1]. Around 147,950 and 42,300 new cases of colorectal cancer were predicted for the USA and UK respectively in 2020 [2, 3]. The reasons for this growth in cases are unclear and are the subject of clinical and basic research [5]. This article considers a range of factors affecting the patient outcomes after surgery, covering both the patient’s individual characteristics and the nature of the surgery. The patient characteristics include performance status (ASA grade) and BMI, reflecting prior work that shows the effects of obesity on a range of conditions, including cancers [6]

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