6533b81ffe1ef96bd12779eb

RESEARCH PRODUCT

Transferability of Deep Learning Algorithms for Malignancy Detection in Confocal Laser Endomicroscopy Images from Different Anatomical Locations of the Upper Gastrointestinal Tract

Florian StelzleChristopher BohrAndreas MaierTobias WürflNicolai OetterChristian KnipferMarc AubrevilleMiguel GoncalvesH Neumann

subject

Confocal laser endomicroscopyComputer sciencebusiness.industryDeep learningTransferabilityPattern recognitionMalignancymedicine.diseaseConvolutional neural network03 medical and health sciences0302 clinical medicine030220 oncology & carcinogenesismedicinePreprocessorUpper gastrointestinalArtificial intelligence030223 otorhinolaryngologybusinessTransfer of learning

description

Squamous Cell Carcinoma (SCC) is the most common cancer type of the epithelium and is often detected at a late stage. Besides invasive diagnosis of SCC by means of biopsy and histo-pathologic assessment, Confocal Laser Endomicroscopy (CLE) has emerged as noninvasive method that was successfully used to diagnose SCC in vivo. For interpretation of CLE images, however, extensive training is required, which limits its applicability and use in clinical practice of the method. To aid diagnosis of SCC in a broader scope, automatic detection methods have been proposed. This work compares two methods with regard to their applicability in a transfer learning sense, i.e. training on one tissue type (from one clinical team) and applying the learnt classification system to another entity (different anatomy, different clinical team). Besides a previously proposed, patch-based method based on convolutional neural networks, a novel classification method on image level (based on a pre-trained Inception V.3 network with dedicated preprocessing and interpretation of class activation maps) is proposed and evaluated.

https://doi.org/10.1007/978-3-030-29196-9_4