Literature DB >> 33420341

Development and validation of an interpretable neural network for prediction of postoperative in-hospital mortality.

Christine K Lee1,2, Muntaha Samad3, Ira Hofer4, Maxime Cannesson5,6, Pierre Baldi2,3.   

Abstract

While deep neural networks (DNNs) and other machine learning models often have higher accuracy than simpler models like logistic regression (LR), they are often considered to be "black box" models and this lack of interpretability and transparency is considered a challenge for clinical adoption. In healthcare, intelligible models not only help clinicians to understand the problem and create more targeted action plans, but also help to gain the clinicians' trust. One method of overcoming the limited interpretability of more complex models is to use Generalized Additive Models (GAMs). Standard GAMs simply model the target response as a sum of univariate models. Inspired by GAMs, the same idea can be applied to neural networks through an architecture referred to as Generalized Additive Models with Neural Networks (GAM-NNs). In this manuscript, we present the development and validation of a model applying the concept of GAM-NNs to allow for interpretability by visualizing the learned feature patterns related to risk of in-hospital mortality for patients undergoing surgery under general anesthesia. The data consists of 59,985 patients with a feature set of 46 features extracted at the end of surgery to which we added previously not included features: total anesthesia case time (1 feature); the time in minutes spent with mean arterial pressure (MAP) below 40, 45, 50, 55, 60, and 65 mmHg during surgery (6 features); and Healthcare Cost and Utilization Project (HCUP) Code Descriptions of the Primary current procedure terminology (CPT) codes (33 features) for a total of 86 features. All data were randomly split into 80% for training (n = 47,988) and 20% for testing (n = 11,997) prior to model development. Model performance was compared to a standard LR model using the same features as the GAM-NN. The data consisted of 59,985 surgical records, and the occurrence of in-hospital mortality was 0.81% in the training set and 0.72% in the testing set. The GAM-NN model with HCUP features had the highest area under the curve (AUC) 0.921 (0.895-0.95). Overall, both GAM-NN models had higher AUCs than LR models, however, had lower average precisions. The LR model without HCUP features had the highest average precision 0.217 (0.136-0.31). To assess the interpretability of the GAM-NNs, we then visualized the learned contributions of the GAM-NNs and compared against the learned contributions of the LRs for the models with HCUP features. Overall, we were able to demonstrate that our proposed generalized additive neural network (GAM-NN) architecture is able to (1) leverage a neural network's ability to learn nonlinear patterns in the data, which is more clinically intuitive, (2) be interpreted easily, making it more clinically useful, and (3) maintain model performance as compared to previously published DNNs.

Entities:  

Year:  2021        PMID: 33420341     DOI: 10.1038/s41746-020-00377-1

Source DB:  PubMed          Journal:  NPJ Digit Med        ISSN: 2398-6352


  5 in total

1.  Novel Insight into the Relationship Between Muscle-Fat and Bone in Type 2 Diabetes Ranging from Normal Weight to Obesity.

Authors:  Hui Wang; Huaiming Peng; Linlin Zhang; Wei Gao; Jingya Ye
Journal:  Diabetes Metab Syndr Obes       Date:  2022-05-10       Impact factor: 3.249

Review 2.  Artificial intelligence in perioperative medicine: a narrative review.

Authors:  Hyun-Kyu Yoon; Hyun-Lim Yang; Chul-Woo Jung; Hyung-Chul Lee
Journal:  Korean J Anesthesiol       Date:  2022-03-29

3.  Integration of feature vectors from raw laboratory, medication and procedure names improves the precision and recall of models to predict postoperative mortality and acute kidney injury.

Authors:  Ira S Hofer; Marina Kupina; Lori Laddaran; Eran Halperin
Journal:  Sci Rep       Date:  2022-06-17       Impact factor: 4.996

Review 4.  Artificial intelligence and anesthesia: a narrative review.

Authors:  Valentina Bellini; Emanuele Rafano Carnà; Michele Russo; Fabiola Di Vincenzo; Matteo Berghenti; Marco Baciarello; Elena Bignami
Journal:  Ann Transl Med       Date:  2022-05

5.  A multicenter prospective study on postoperative pulmonary complications prediction in geriatric patients with deep neural network model.

Authors:  Xiran Peng; Tao Zhu; Guo Chen; Yaqiang Wang; Xuechao Hao
Journal:  Front Surg       Date:  2022-08-09
  5 in total

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