Predicting rare outcomes in abdominal wall reconstruction using image-based deep learning models

被引:9
|
作者
Ayuso, Sullivan A. [1 ]
Elhage, Sharbel A. [1 ]
Zhang, Yizi [2 ]
Aladegbami, Bola G. [3 ]
Gersin, Keith S. [1 ]
Fischer, John P. [4 ]
Augenstein, Vedra A. [1 ]
Colavita, Paul D. [1 ]
Heniford, Todd [1 ,5 ]
机构
[1] Carolinas Med Ctr, Dept Surg, Div Gastrointestinal & Minimally Invas Surg, Charlotte, NC USA
[2] Columbia Univ, Grad Sch, Dept Stat, New York, NY USA
[3] Baylor Univ, Ctr Adv Surg, Med Ctr, Dept Surg, Dallas, TX USA
[4] Univ Penn, Dept Surg, Div Plast Surg, Philadelphia, PA USA
[5] Gastrointestinal & Minimally Invas Surg, Dept Surg, 1025 Morehead Med Dr Suite 300, Charlotte, NC 28204 USA
关键词
VENTRAL HERNIA REPAIR; MESH; COMPLICATIONS; RISK; STRATEGIES; RECURRENCE; COST;
D O I
10.1016/j.surg.2022.06.048
中图分类号
R61 [外科手术学];
学科分类号
摘要
Background: Deep learning models with imbalanced data sets are a challenge in the fields of artificial intelligence and surgery. The aim of this study was to develop and compare deep learning models that predict rare but devastating postoperative complications after abdominal wall reconstruction.Methods: A prospectively maintained institutional database was used to identify abdominal wall reconstruction patients with preoperative computed tomography scans. Conventional deep learning models were developed using an 8-layer convolutional neural network and a 2-class training system (ie, learns negative and positive outcomes). Conventional deep learning models were compared to deep learning models that were developed using a generative adversarial network anomaly framework, which uses image augmentation and anomaly detection. The primary outcomes were receiver operating characteristic values for predicting mesh infection and pulmonary failure.Results: Computed tomography scans from 510 patients were used with a total of 10,004 images. Mesh infection and pulmonary failure occurred in 3.7% and 5.6% of patients, respectively. The conventional deep learning models were less effective than generative adversarial network anomaly for predicting mesh infection (receiver operating characteristic 0.61 vs 0.73, P < .01) and pulmonary failure (receiver operating characteristic 0.59 vs 0.70, P < .01). Although the conventional deep learning models had higher accuracies/specificities for predicting mesh infection (0.93 vs 0.78, P < .01/.96 vs .78, P < .01) and pulmonary failure (0.88 vs 0.68, P < .01/.92 vs .67, P < .01), they were substantially compromised by decreased model sensitivity (0.25 vs 0.68, P < .01/.27 vs .73, P < .01).Conclusion: Compared to conventional deep learning models, generative adversarial network anomaly deep learning models showed improved performance on imbalanced data sets, predominantly by increasing model sensitivity. Understanding patients who are at risk for rare but devastating post-operative complications can improve risk stratification, resource utilization, and the consent process.(c) 2022 Elsevier Inc. All rights reserved.
引用
收藏
页码:748 / 755
页数:8
相关论文
共 50 条
  • [11] Deriving Optimal Deep Learning Models for Image-based Malware Classification
    Mitsuhashi, Rikima
    Shinagawa, Takahiro
    37TH ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING, 2022, : 1727 - 1729
  • [12] Image-Based Outlet Fire Causing Classification Using CNN-Based Deep Learning Models
    Lee, Hoon-Gi
    Pham, Thi-Ngot
    Nguyen, Viet-Hoan
    Kwon, Ki-Ryong
    Lee, Jae-Hun
    Huh, Jun-Ho
    IEEE ACCESS, 2024, 12 : 135104 - 135116
  • [13] Ocular image-based deep learning for predicting refractive error: A systematic review
    Yew, Samantha Min Er
    Chen, Yibing
    Goh, Jocelyn Hui Lin
    Chen, David Ziyou
    Tan, Marcus Chun Jin
    Cheng, Ching-Yu
    Koh, Victor Teck Chang
    Tham, Yih-Chung
    ADVANCES IN OPHTHALMOLOGY PRACTICE AND RESEARCH, 2024, 4 (03): : 164 - 172
  • [14] Using Deep Learning for Image-Based Plant Disease Detection
    Mohanty, Sharada P.
    Hughes, David P.
    Salathe, Marcel
    FRONTIERS IN PLANT SCIENCE, 2016, 7
  • [15] Prediction of sloshing pressure using image-based deep learning
    Kim, Ki Jong
    Kim, Daegyoum
    OCEAN ENGINEERING, 2024, 303
  • [16] Image-based phenotyping of disaggregated cells using deep learning
    Samuel Berryman
    Kerryn Matthews
    Jeong Hyun Lee
    Simon P. Duffy
    Hongshen Ma
    Communications Biology, 3
  • [17] Image-based Plant Diseases Detection using Deep Learning
    Panchal A.V.
    Patel S.C.
    Bagyalakshmi K.
    Kumar P.
    Khan I.R.
    Soni M.
    Materials Today: Proceedings, 2023, 80 : 3500 - 3506
  • [18] Image-Based Monitoring of Jellyfish Using Deep Learning Architecture
    Kim, Hanguen
    Koo, Jungmo
    Kim, Donghoon
    Jung, Sungwook
    Shin, Jae-Uk
    Lee, Serin
    Myung, Hyun
    IEEE SENSORS JOURNAL, 2016, 16 (08) : 2215 - 2216
  • [19] A Survey of Image-Based Indoor Localization using Deep Learning
    Bai, Xiaolan
    Huang, May
    Prasad, Neeli Rashmi
    Mihovska, Albena Dimitrova
    2019 22ND INTERNATIONAL SYMPOSIUM ON WIRELESS PERSONAL MULTIMEDIA COMMUNICATIONS (WPMC), 2019,
  • [20] Image-based process monitoring using deep learning framework
    Lyu, Yuting
    Chen, Junghui
    Song, Zhihuan
    CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2019, 189 : 8 - 17