Image-Based Deep Learning Models Can Predict Abdominal Surgery Outcomes: Study
Deep Learning Models can successfully predict surgical complexity and postoperative outcomes in abdominal wall reconstruction.
Written By : MD Bureau
Medically Reviewed By : Dr. Kamal Kant Kohli
Published On 2021-07-10 03:30 GMT | Update On 2021-07-10 04:56 GMT
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Deep Learning Models built using routine preoperative imaging can successfully predict surgical complexity and postoperative outcomes in abdominal wall reconstruction, according to a recent study published in the Journal of American Medical Association.
Deep learning is a type of machine learning in which a model learns to perform classification tasks directly from images, text or sound. Image-based deep learning models (DLMs) have been used in other disciplines, but this method has yet to be used to predict surgical outcomes. With this background, researchers carried out a study to examine whether deep learning models (DLMs) using routine preoperative imaging can predict surgical complexity and outcomes in abdominal wall reconstruction. They applied image-based deep learning to predict complexity, defined as need for component separation, and pulmonary and wound complications after abdominal wall reconstruction (AWR).
This quality improvement study was performed at an 874-bed hospital and tertiary hernia referral center from September 2019 to January 2020. A prospective database was queried for patients with ventral hernias who underwent open AWR by experienced surgeons and had preoperative computed tomography images containing the entire hernia defect. An 8-layer convolutional neural network was generated to analyze image characteristics. Images were batched into training (approximately 80%) or test sets (approximately 20%) to analyze model output. Test sets were blinded from the convolutional neural network until training was completed. For the surgical complexity model, a separate validation set of computed tomography images was evaluated by a blinded panel of 6 expert AWR surgeons and the surgical complexity DLM. Analysis started February 2020.
A total of 369 patients and 9303 computed tomography images were used. The mean (SD) age of patients was 57.9 (12.6) years, 232 (62.9%) were female, and 323 (87.5%) were White. The DLM for predicting surgical complexity was compared against the prediction of 6 expert AWR surgeons.
The surgical complexity DLM performed well and, when compared with surgeon prediction on the validation set, performed better with an accuracy of 81.3% compared with 65.0%. Surgical site infection was predicted successfully. However, the DLM for predicting pulmonary failure was less effective with an ROC of 0.545 (P = .03).
"Image-based DLM using routine, preoperative computed tomography images was successful in predicting surgical complexity and more accurate than expert surgeon judgment. An additional DLM accurately predicted the development of surgical site infection," the investigators concluded.
Reference:
Study titled, "Development and Validation of Image-Based Deep Learning Models to Predict Surgical Complexity and Complications in Abdominal Wall Reconstruction," as published in JAMA Surgery.
DOI: 10.1001/jamasurg.2021.3012
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