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Explainable Artificial Intelligence (Xai) for Predicting the Need for Intubation in Methanol-Poisoned Patients: A Study Comparing Deep and Machine Learning Models Publisher Pubmed



Moulaei K1 ; Afrash MR2 ; Parvin M3 ; Shadnia S4 ; Rahimi M4 ; Mostafazadeh B4 ; Evini PET4 ; Sabet B2, 5 ; Vahabi SM6 ; Soheili A8 ; Fathy M6, 7 ; Kazemi A7 ; Khani S7 ; Mortazavi SM7 Show All Authors
Authors
  1. Moulaei K1
  2. Afrash MR2
  3. Parvin M3
  4. Shadnia S4
  5. Rahimi M4
  6. Mostafazadeh B4
  7. Evini PET4
  8. Sabet B2, 5
  9. Vahabi SM6
  10. Soheili A8
  11. Fathy M6, 7
  12. Kazemi A7
  13. Khani S7
  14. Mortazavi SM7
  15. Hosseini SM4
Show Affiliations
Authors Affiliations
  1. 1. Department of Health Information Technology, School of Paramedical, Ilam University of Medical Sciences, Ilam, Iran
  2. 2. Deparment of Artificial Intelligence, Smart University of Medical Sciences, Tehran, Iran
  3. 3. Department of Industrial and Systems Engineering, Auburn University, Auburn, AL, United States
  4. 4. Toxicological Research Center, Excellence Center of Clinical Toxicology, Department of Clinical Toxicology, Loghman Hakim Hospital, Shahid Beheshti University of Medical Sciences, Tehran, Iran
  5. 5. Department of Surgery, Faculty of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran
  6. 6. School of Medicine, Tehran University of Medical Sciences, Tehran, Iran
  7. 7. Students Research Committee, School of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran
  8. 8. Rajaie Cardiovascular Medical and Research Center, Iran University of Medical Sciences, Tehran, Iran

Source: Scientific Reports Published:2024


Abstract

The need for intubation in methanol-poisoned patients, if not predicted in time, can lead to irreparable complications and even death. Artificial intelligence (AI) techniques like machine learning (ML) and deep learning (DL) greatly aid in accurately predicting intubation needs for methanol-poisoned patients. So, our study aims to assess Explainable Artificial Intelligence (XAI) for predicting intubation necessity in methanol-poisoned patients, comparing deep learning and machine learning models. This study analyzed a dataset of 897 patient records from Loghman Hakim Hospital in Tehran, Iran, encompassing cases of methanol poisoning, including those requiring intubation (202 cases) and those not requiring it (695 cases). Eight established ML (SVM, XGB, DT, RF) and DL (DNN, FNN, LSTM, CNN) models were used. Techniques such as tenfold cross-validation and hyperparameter tuning were applied to prevent overfitting. The study also focused on interpretability through SHAP and LIME methods. Model performance was evaluated based on accuracy, specificity, sensitivity, F1-score, and ROC curve metrics. Among DL models, LSTM showed superior performance in accuracy (94.0%), sensitivity (99.0%), specificity (94.0%), and F1-score (97.0%). CNN led in ROC with 78.0%. For ML models, RF excelled in accuracy (97.0%) and specificity (100%), followed by XGB with sensitivity (99.37%), F1-score (98.27%), and ROC (96.08%). Overall, RF and XGB outperformed other models, with accuracy (97.0%) and specificity (100%) for RF, and sensitivity (99.37%), F1-score (98.27%), and ROC (96.08%) for XGB. ML models surpassed DL models across all metrics, with accuracies from 93.0% to 97.0% for DL and 93.0% to 99.0% for ML. Sensitivities ranged from 98.0% to 99.37% for DL and 93.0% to 99.0% for ML. DL models achieved specificities from 78.0% to 94.0%, while ML models ranged from 93.0% to 100%. F1-scores for DL were between 93.0% and 97.0%, and for ML between 96.0% and 98.27%. DL models scored ROC between 68.0% and 78.0%, while ML models ranged from 84.0% to 96.08%. Key features for predicting intubation necessity include GCS at admission, ICU admission, age, longer folic acid therapy duration, elevated BUN and AST levels, VBG_HCO3 at initial record, and hemodialysis presence. This study as the showcases XAI's effectiveness in predicting intubation necessity in methanol-poisoned patients. ML models, particularly RF and XGB, outperform DL counterparts, underscoring their potential for clinical decision-making. © The Author(s) 2024.