Enhancing clinical decision support with explainable deep learning framework for C-section forecasting

被引:1
|
作者
Zafar, Muhammad Mohsin [1 ]
Javaid, Nadeem [2 ]
Shaheen, Ifra [2 ]
Alrajeh, Nabil [3 ]
Aslam, Sheraz [4 ]
机构
[1] COMSATS Univ Islamabad, Dept Comp Sci, Islamabad 44000, Pakistan
[2] Natl Yunlin Univ Sci & Technol, Int Grad Sch Artificial Intelligence, ComSens Lab, Touliu 64002, Yunlin, Taiwan
[3] King Saud Univ, Coll Appl Med Sci, Dept Biomed Technol, Riyadh 11633, Saudi Arabia
[4] Cyprus Univ Technol, Dept Elect Engn Comp Engn & Informat EECEI, CY-3036 Limassol, Cyprus
关键词
Deep learning; Cesarean section; Explainable artificial intelligence; Normal delivery; SHapley additive explanation; ELECTRICITY THEFT;
D O I
10.1007/s00607-024-01354-2
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Cesarean Section (C-Section) is an operation whereby a baby is brought to the world through a cut made on the abdomen and uterus. The factors that lead to C-Section includes premature rupture of the membranes, having an abnormal fetal heart rate, having previous C-Sections, or previous surgeries on the uterus, human immunodeficiency virus, having undergone cervical cerclage, or having sustained accidental injuries. If not predicted in the early stages, the mother and especially the baby faces many risks. Timely intervention and monitoring are made possible by early forcasting the mode of delivery. Although Deep Learning (DL) models aid in medical decision making, practitioners continue to have reservations about the accuracy and transparency in identifying important contributing factors. Our study presents an explainable DL system that utilizes a health indicators dataset comprising data gathered in India between 2019 and 2021 to forecast C-Section deliveries in the early stages. In order to solve class imbalance issues, the dataset is preprocessed utilizing encoding of categorical features, Proximity Weighted Synthetic oversampling, and a point biserial correlation coefficient approach to identify the highly correlated 65 features. A number of measures are used to assess the proposed Gated Highway Multi-layer-perceptron (GHiM) model, including accuracy, F1-score, recall, precision, MCC, loss, and execution time. With its accuracy of 0.866, F1-score of 0.863, and MCC of 0.732, the GHiM model outperformed models such as GRU, MLP, and HighwayNet by 2.5-3.5% Due to the complex structure of DL models, they are prone to over-fitting which is mitigated by training the GHiM using stratified 10-fold cross validation. Additionally, the most important characteristics in the categorization of C-Sections and normal births are determined by applying SHapley Additive exPlanation. This framework demonstrates that the GHiM model offers good accuracy and interpretability, and can enhance clinical decision support systems for C-Section delivery forecasting.
引用
收藏
页数:45
相关论文
共 50 条
  • [41] Pandemic Forecasting by Machine Learning in a Decision Support Problem
    Sudakov V.A.
    Titov Y.P.
    Mathematical Models and Computer Simulations, 2023, 15 (3) : 520 - 528
  • [42] Forecasting Methods to Support the Decision Framework of Prosumers in Deregulated Markets
    Panapakidis, Ioannis P.
    Koltsaklis, Nikolaos E.
    Christoforidis, Georgios C.
    PROCEEDINGS OF 9TH INTERNATIONAL CONFERENCE ON MODERN POWER SYSTEMS (MPS 2021), 2021,
  • [43] Analyzing video recorded support of postnatal transition in preterm infants following a c-section
    Konstantelos, Dimitrios
    Dinger, Juergen
    Ifflaender, Sascha
    Ruediger, Mario
    BMC PREGNANCY AND CHILDBIRTH, 2016, 16
  • [44] Analyzing video recorded support of postnatal transition in preterm infants following a c-section
    Dimitrios Konstantelos
    Jürgen Dinger
    Sascha Ifflaender
    Mario Rüdiger
    BMC Pregnancy and Childbirth, 16
  • [45] Deep Learning Application to Clinical Decision Support System in Sleep Stage Classification
    Kim, Dongyoung
    Lee, Jeonggun
    Woo, Yunhee
    Jeong, Jaemin
    Kim, Chulho
    Kim, Dong-Kyu
    JOURNAL OF PERSONALIZED MEDICINE, 2022, 12 (02):
  • [46] An explainable data-driven decision support framework for strategic customer development
    Onari, Mohsen Abbaspour
    Rezaee, Mustafa Jahangoshai
    Saberi, Morteza
    Nobile, Marco S.
    KNOWLEDGE-BASED SYSTEMS, 2024, 295
  • [47] DEEP LEARNING APPLICATION TO CLINICAL DECISION SUPPORT SYSTEM IN SLEEP STAGE CLASSIFICATION
    Kim, D. -K.
    Kim, D.
    Lee, J. -G.
    Woo, Y.
    Jeong, J.
    SLEEP MEDICINE, 2022, 100 : S293 - S293
  • [48] A Clinical Decision Support System for Heart Disease Prediction Using Deep Learning
    Almazroi, Abdulwahab Ali
    Aldhahri, Eman A.
    Bashir, Saba
    Ashfaq, Sufyan
    IEEE ACCESS, 2023, 11 : 61646 - 61659
  • [49] An Innovative Ensemble Deep Learning Clinical Decision Support System for Diabetes Prediction
    Al Reshan, Mana Saleh
    Amin, Samina
    Zeb, Muhammad Ali
    Sulaiman, Adel
    Alshahrani, Hani
    Shaikh, Asadullah
    Elmagzoub, Mohamed A.
    IEEE ACCESS, 2024, 12 : 106193 - 106210
  • [50] Explainable hybrid deep learning framework for enhancing multi-step solar ultraviolet-B radiation predictions
    Prasad, Salvin S.
    Joseph, Lionel P.
    Deo, Ravinesh C.
    Downs, Nathan J.
    Acharya, Rajendra
    Yaseen, Zaher M.
    ATMOSPHERIC ENVIRONMENT, 2025, 343