Litcius/Paper detail

Thyroid carcinoma detection on whole histologic slides using hyperspectral imaging and deep learning

Minh Tran, Ling Ma, James V. Litter, Amy Y. Chen, Baowei Fei

202219 citationsDOIOpen Access PDF

Abstract

Hyperspectral imaging (HSI), a non-invasive imaging modality, has been successfully used in many different biological and medical applications. One such application is in the field of oncology, where hyperspectral imaging is being used on histologic samples. This study compares the performances of different image classifiers using different imaging modalities as training data. From a database of 33 fixed tissues from head and neck patients with follicular thyroid carcinoma, we produced three different datasets: an RGB image dataset that was acquired from a whole slide image scanner, a hyperspectral (HS) dataset that was acquired with a compact hyperspectral camera, and an HS-synthesized RGB image dataset. Three separate deep learning classifiers were trained using the three datasets. We show that the deep learning classifier trained on HSI data has an area under the receiver operator characteristic curve (AUC-ROC) of 0.966, higher than that of the classifiers trained on RGB and HSI-synthesized RGB data. This study demonstrates that hyperspectral images improve the performance of cancer classification on whole histologic slides. Hyperspectral imaging and deep learning provide an automatic tool for thyroid cancer detection on whole histologic slides.

Topics & Concepts

Hyperspectral imagingArtificial intelligenceComputer scienceRGB color modelDeep learningMedical imagingPattern recognition (psychology)Ground truthClassifier (UML)Computer visionAI in cancer detectionInfrared Thermography in MedicineOptical Imaging and Spectroscopy Techniques