Augmenting a spine CT scans dataset using VAEs, GANs, and transfer learning for improved detection of vertebral compression fractures

被引:0
|
作者
机构
[1] El Kojok, Zeina
[2] Al Khansa, Hadi
[3] Trad, Fouad
[4] Chehab, Ali
关键词
Adversarial machine learning - Arthroplasty - Contrastive Learning - Deep learning - Transfer learning - Variational techniques;
D O I
10.1016/j.compbiomed.2024.109446
中图分类号
学科分类号
摘要
In recent years, deep learning has become a popular tool to analyze and classify medical images. However, challenges such as limited data availability, high labeling costs, and privacy concerns remain significant obstacles. As such, generative models have been extensively explored as a solution to generate new images and overcome the stated challenges. In this paper, we augment a dataset of chest CT scans for Vertebral Compression Fractures (VCFs) collected from the American University of Beirut Medical Center (AUBMC), specifically targeting the detection of incidental fractures that are often overlooked in routine chest CTs, as these scans are not typically focused on spinal analysis. Our goal is to enhance AI systems to enable automated early detection of such incidental fractures, addressing a critical healthcare gap and leading to improved patient outcomes by catching fractures that might otherwise go undiagnosed. We first generate a synthetic dataset based on the segmented CTSpine1K dataset to simulate real grayscale data that aligns with our specific scenario. Then, we use this generated data to evaluate the generative capabilities of Deep Convolutional Generative Adverserial Networks (DCGANs), variational autoencoders (VAEs), and VAE-GAN models. The VAE-GAN model demonstrated the highest performance, achieving a Fréchet Inception Distance (FID) five times lower than the other architectures. To adapt this model to real-image scenarios, we perform transfer learning on the GAN, training it with the real dataset collected from AUBMC and generating additional samples. Finally, we train a CNN using augmented datasets that include both real and generated synthetic data and compare its performance to training on real data alone. We then evaluate the model exclusively on a test set composed of real images to assess the effect of the generated data on real-world performance. We find that training on augmented datasets significantly improves the classification accuracy on a test set composed of real images by 16 %, increasing it from 73 % to 89 %. This improvement demonstrates that the generated data is of high quality and enhances the model's ability to perform well against unseen, real data. © 2024 The Authors
引用
收藏
相关论文
共 24 条
  • [1] Opportunistic Detection of Vertebral Compression Fractures on Chest and Abdominal CT scans using Machine Learning & Artificial Intelligence: Closing the Care Gap
    El Helou, Mohamad Othman
    Hussein, Ali
    El Alam, Raquelle
    Chahine, Reve
    Rafeh, Walid
    Bacha, Dania Salih
    Saleh, Firas
    Khoury, Nabil
    Chehab, Ali
    Fuleihan, Ghada El-Hajj
    JOURNAL OF BONE AND MINERAL RESEARCH, 2023, 38 : 249 - 249
  • [2] Automated Assessment of Vertebral Fractures from Chest CT Scans Using Deep Learning
    Nadeem, S.
    Comellas, A. P.
    Guha, I.
    Hoffman, E. A.
    Regan, E. A.
    Saha, P. K.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2022, 205
  • [3] PERFORMANCE EVALUATION OF AN ARTIFICIAL INTELLIGENCE-BASED SOFTWARE FOR OPPORTUNISTIC DETECTION OF VERTEBRAL COMPRESSION FRACTURES ON CT SCANS
    Ayobi, A.
    Chow, D.
    Soun, J.
    Chang, P.
    Castineira, C.
    Kiewsky, J.
    Mahfoud, M.
    Avare, C.
    AGING CLINICAL AND EXPERIMENTAL RESEARCH, 2024, 36 : S105 - S105
  • [4] AUTOMATED DETECTION OF VERTEBRAL FRACTURES IN ROUTINE CT SCANS OF THE CHEST AND ABDOMEN: EXTERNAL VALIDATION OF A DEEP LEARNING ALGORITHM
    Nicolaes, J.
    Skjodt, M. Kriegbaum
    Libanati, C.
    Smith, C. Dyer
    Olsen, K. Rose
    Cooper, C.
    Abrahamsen, B.
    AGING CLINICAL AND EXPERIMENTAL RESEARCH, 2022, 34 (SUPPL 1) : S188 - S189
  • [5] Accurate detection of fresh and old vertebral compression fractures on CT images using ensemble YOLOR
    Hsieh, Min-Hong
    Chang, Chuan-Yu
    Hsu, Shao-Min
    Multimedia Tools and Applications, 2024, 83 (41) : 89375 - 89391
  • [6] Towards Improved Identification of Vertebral Fractures in Routine Computed Tomography (CT) Scans: Development and External Validation of a Machine Learning Algorithm
    Nicolaes, Joeri
    Skjodt, Michael Kriegbaum
    Raeymaeckers, Steven
    Smith, Christopher Dyer
    Abrahamsen, Bo
    Fuerst, Thomas
    Debois, Marc
    Vandermeulen, Dirk
    Libanati, Cesar
    JOURNAL OF BONE AND MINERAL RESEARCH, 2023, 38 (12) : 1856 - 1866
  • [7] Diagnosis of osteoporotic vertebral compression fractures and fracture level detection using multitask learning with U-Net in lumbar spine lateral radiographs
    Ryu, Seung Min
    Lee, Soyoung
    Jang, Miso
    Koh, Jung-Min
    Bae, Sung Jin
    Jegal, Seong Gyu
    Shin, Keewon
    Kim, Namkug
    COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2023, 21 : 3452 - 3458
  • [8] Opportunistic Identification of Vertebral Compression Fractures on CT Scans of the Chest and Abdomen, Using an AI Algorithm, in a Real-Life Setting
    Bendtsen, Magnus Gronlund
    Hitz, Mette Friberg
    CALCIFIED TISSUE INTERNATIONAL, 2024, 114 (05) : 468 - 479
  • [9] Opportunistic Identification of Vertebral Compression Fractures on CT Scans of the Chest and Abdomen, Using an AI Algorithm, in a Real-Life Setting
    Magnus Grønlund Bendtsen
    Mette Friberg Hitz
    Calcified Tissue International, 2024, 114 : 468 - 479
  • [10] Improved Detection Accuracy of Chronic Vertebral Compression Fractures by Integrating Height Loss Ratio and Deep Learning Approaches
    Lee, Jemyoung
    Park, Heejun
    Yang, Zepa
    Woo, Ok Hee
    Kang, Woo Young
    Kim, Jong Hyo
    DIAGNOSTICS, 2024, 14 (22)