INVESTIGADORES
ORLANDO Jose Ignacio
congresos y reuniones científicas
Título:
An amplified-target loss approach for photoreceptor layer segmentation in pathological OCT scans
Autor/es:
JOSÉ IGNACIO ORLANDO; ANNA BREGGER; HRVOJE BOGUNOVIC; SOPHIE RIEDL; BIANCA S. GERENDAS; MARTIN EHLER; URSULA SCHMIDT-ERFURTH
Lugar:
Shenzhen
Reunión:
Workshop; 6th MICCAI Workshop on Ophthalmic Medical Image Analysis; 2019
Institución organizadora:
Shenzhen University
Resumen:
Segmenting anatomical structures such as the photoreceptor layer in retinal optical coherence tomography (OCT) scans is challenging in pathological scenarios. Supervised deep learning models trained with standard loss functions are usually able to characterize only the most common disease appearance from a training set, resulting in suboptimal performance and poor generalization when dealing with unseen lesions. In this paper we propose to overcome this limitation by means of an augmented target loss function framework. We introduce a novel amplified-target loss that explicitly penalizes errors within the central area of the input images, based on the observation that most of the challenging disease appearance is usually located in this area. We experimentally validated our approach using a data set with OCT scans of patients with macular diseases. We observe increased performance compared to the models that use only the standard losses. Our proposed loss function strongly supports the segmentation model to better distinguish photoreceptors in highly pathological scenarios.