Improving ductal carcinoma in situ classification by convolutional neural network with exponential linear unit and rank-based weighted pooling.
Yu-Dong ZhangSuresh Chandra SatapathyDi WuDavid S GutteryJuan Manuel GórrizShui-Hua WangPublished in: Complex & intelligent systems (2020)
Ductal carcinoma in situ (DCIS) is a pre-cancerous lesion in the ducts of the breast, and early diagnosis is crucial for optimal therapeutic intervention. Thermography imaging is a non-invasive imaging tool that can be utilized for detection of DCIS and although it has high accuracy (~ 88%), it is sensitivity can still be improved. Hence, we aimed to develop an automated artificial intelligence-based system for improved detection of DCIS in thermographs. This study proposed a novel artificial intelligence based system based on convolutional neural network (CNN) termed CNN-BDER on a multisource dataset containing 240 DCIS images and 240 healthy breast images. Based on CNN, batch normalization, dropout, exponential linear unit and rank-based weighted pooling were integrated, along with L-way data augmentation. Ten runs of tenfold cross validation were chosen to report the unbiased performances. Our proposed method achieved a sensitivity of 94.08 ± 1.22%, a specificity of 93.58 ± 1.49 and an accuracy of 93.83 ± 0.96. The proposed method gives superior performance than eight state-of-the-art approaches and manual diagnosis. The trained model could serve as a visual question answering system and improve diagnostic accuracy.
Keyphrases
- convolutional neural network
- artificial intelligence
- deep learning
- big data
- machine learning
- high resolution
- magnetic resonance
- loop mediated isothermal amplification
- randomized controlled trial
- real time pcr
- electronic health record
- magnetic resonance imaging
- mass spectrometry
- fluorescence imaging
- anaerobic digestion
- structural basis
- high intensity