Deep Learning Assessment for Mining Important Medical Image Features of Various Modalities.
Ioannis D ApostolopoulosNikolaos D PapathanasiouNikolaos I PapandrianosElpiniki I PapageorgiouGeorge S PanayiotakisPublished in: Diagnostics (Basel, Switzerland) (2022)
Deep learning (DL) is a well-established pipeline for feature extraction in medical and nonmedical imaging tasks, such as object detection, segmentation, and classification. However, DL faces the issue of explainability, which prohibits reliable utilisation in everyday clinical practice. This study evaluates DL methods for their efficiency in revealing and suggesting potential image biomarkers. Eleven biomedical image datasets of various modalities are utilised, including SPECT, CT, photographs, microscopy, and X-ray. Seven state-of-the-art CNNs are employed and tuned to perform image classification in tasks. The main conclusion of the research is that DL reveals potential biomarkers in several cases, especially when the models are trained from scratch in domains where low-level features such as shapes and edges are not enough to make decisions. Furthermore, in some cases, device acquisition variations slightly affect the performance of DL models.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- high resolution
- working memory
- machine learning
- healthcare
- clinical practice
- dual energy
- computed tomography
- resistance training
- high throughput
- risk assessment
- optical coherence tomography
- rna seq
- high speed
- image quality
- contrast enhanced
- photodynamic therapy
- body composition
- human health
- pet ct
- single cell
- positron emission tomography
- climate change
- data analysis