Ensemble method using real images, metadata and synthetic images for control of class imbalance in classification

被引:0
作者
Rogers Aloo
Atsuko Mutoh
Koichi Moriyama
Tohgoroh Matsui
Nobuhiro Inuzuka
机构
[1] Nagoya Institute of Technology,
[2] Chubu University,undefined
来源
Artificial Life and Robotics | 2022年 / 27卷
关键词
Image classification; Patient metadata; Chest X-rays; Pneumonia detection; Imbalance data; Image synthesis;
D O I
暂无
中图分类号
学科分类号
摘要
Binary classification and anomaly detection face the problem of class imbalance in data sets. The contribution of this paper is to provide an ensemble model that improves image binary classification by reducing the class imbalance between the minority and majority classes in a data set. The ensemble model is a classifier of real images, synthetic images, and metadata associated with the real images. First, we apply a generative model to synthesize images of the minority class from the real image data set. Secondly, we train the ensemble model jointly with synthesized images of the minority class, real images, and metadata. Finally, we evaluate the model performance using a sensitivity metric to observe the difference in classification resulting from the adjustment of class imbalance. Improving the imbalance of the minority class by adding half the size of the majority class we observe an improvement in the classifier’s sensitivity by 12% and 24% for the benchmark pre-trained models of RESNET50 and DENSENet121 respectively.
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页码:796 / 803
页数:7
相关论文
共 47 条
  • [1] Pang G(2021)Deep learning for anomaly detection: a review ACM Comput Surv (CSUR) 54 1-38
  • [2] Shen C(2018)Preliminary results that assess metformin treatment in a preclinical model of pancreatic cancer using simultaneous [18F]FDG PET and acidoCEST MRI Mol Imaging Biol 20 575-583
  • [3] Cao L(2010)A discrimination method for the detection of pneumonia using chest radiograph Comput Med Imaging Graph 34 160-166
  • [4] Van Den Hengel A(2008)Computer-aided diagnosis in chest radiography for detection of childhood pneumonia Int J Med Inform 77 555-564
  • [5] Goldenberg JM(2011)Detection of pneumonia in chest x-ray images J X-Ray Sci Technol 19 423-428
  • [6] Cárdenas-Rodríguez J(2018)Variable generalization performance of a deep learning model to detect pneumonia in chest radiographs: a cross-sectional study PLoS Med 15 e1002683-885
  • [7] Pagel MD(2021)Deep learning classifier with patient’s metadata of dermoscopic images in malignant melanoma detection J Multidiscip Healthc 14 877-1004
  • [8] Noor NM(2021)Synthesis of COVID-19 chest x-rays using unpaired image-to-image translation Soc Netw Anal Min 11 23-1298
  • [9] Rijal OM(2017)Automated melanoma recognition in dermoscopy images via very deep residual networks IEEE Trans Med Imaging 36 994-undefined
  • [10] Yunus A(2016)Deep convolutional neural networks for computer-aided detection: CNN architectures, dataset characteristics and transfer learning IEEE Trans Med Imaging 35 1285-undefined