Literature DB >> 33594578

A Machine Learning Approach for Postoperative Outcome Prediction: Surgical Data Science Application in a Thoracic Surgery Setting.

Michele Salati1, Lucia Migliorelli2, Sara Moccia2, Marco Andolfi3, Alberto Roncon3, Gian Marco Guiducci3, Francesco Xiumè3, Michela Tiberi3, Emanuele Frontoni2, Majed Refai3.   

Abstract

BACKGROUND: The use of innovative methodologies, such as Surgical Data Science (SDS), based on artificial intelligence (AI) could prove to be useful for extracting knowledge from clinical data overcoming limitations inherent in medical registries analysis. The aim of the study is to verify if the application of an AI analysis to our database could develop a model able to predict cardiopulmonary complications in patients submitted to lung resection.
METHODS: We retrospectively analyzed data of patients submitted to lobectomy, bilobectomy, segmentectomy and pneumonectomy (January 2006-December 2018). Fifty preoperative characteristics were used for predicting the occurrence of cardiopulmonary complications. The prediction model was developed by training and testing a machine learning (ML) algorithm (XGBOOST) able to deal with registries characterized by missing data. We calculated the receiver operating characteristic curve, true positive rate (TPR), positive predictive value (PPV) and accuracy of the model.
RESULTS: We analyzed 1360 patients (lobectomy: 80.7%, segmentectomy: 11.9%, bilobectomy 3.7%, pneumonectomy: 3.7%) and 23.3% of them experienced cardiopulmonary complications. XGBOOST algorithm generated a model able to predict complications with an area under the curve of 0.75, a TPR of 0.76, a PPV of 0.68. The model's accuracy was 0.70. The algorithm included all the variables in the model regardless of their completeness.
CONCLUSIONS: Using SDS principles in thoracic surgery for the first time, we developed an ML model able to predict cardiopulmonary complications after lung resection based on 50 patient characteristics. The prediction was also possible even in the case of those patients for whom we had incomplete data. This model could improve the process of counseling and the perioperative management of lung resection candidates.

Entities:  

Year:  2021        PMID: 33594578     DOI: 10.1007/s00268-020-05948-7

Source DB:  PubMed          Journal:  World J Surg        ISSN: 0364-2313            Impact factor:   3.352


  2 in total

1.  Guidelines on the radical management of patients with lung cancer.

Authors:  Eric Lim; David Baldwin; Michael Beckles; John Duffy; James Entwisle; Corinne Faivre-Finn; Keith Kerr; Alistair Macfie; Jim McGuigan; Simon Padley; Sanjay Popat; Nicholas Screaton; Michael Snee; David Waller; Chris Warburton; Thida Win
Journal:  Thorax       Date:  2010-10       Impact factor: 9.139

2.  Surgical data science: The new knowledge domain.

Authors:  S Swaroop Vedula; Gregory D Hager
Journal:  Innov Surg Sci       Date:  2017-04-20
  2 in total
  4 in total

Review 1.  Artificial intelligence in thoracic surgery: a narrative review.

Authors:  Valentina Bellini; Marina Valente; Paolo Del Rio; Elena Bignami
Journal:  J Thorac Dis       Date:  2021-12       Impact factor: 2.895

Review 2.  Artificial intelligence assisted display in thoracic surgery: development and possibilities.

Authors:  Zhuxing Chen; Yudong Zhang; Zeping Yan; Junguo Dong; Weipeng Cai; Yongfu Ma; Jipeng Jiang; Keyao Dai; Hengrui Liang; Jianxing He
Journal:  J Thorac Dis       Date:  2021-12       Impact factor: 3.005

Review 3.  The development of machine learning in lung surgery: A narrative review.

Authors:  Anas Taha; Dominik Valentin Flury; Bassey Enodien; Stephanie Taha-Mehlitz; Ralph A Schmid
Journal:  Front Surg       Date:  2022-09-12

4.  Prediction of postoperative cardiopulmonary complications after lung resection in a Chinese population: A machine learning-based study.

Authors:  Guanghua Huang; Lei Liu; Luyi Wang; Shanqing Li
Journal:  Front Oncol       Date:  2022-09-23       Impact factor: 5.738

  4 in total

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