Ibrahem Kandel (Avtor), Mauro Castelli (Avtor), Aleš Popovič (Avtor)

Povzetek

The classification of histopathology images requires an experienced physician with years of experience to classify the histopathology images accurately. In this study, an algorithm was developed to assist physicians in classifying histopathology images; the algorithm receives the histopathology image as an input and produces the percentage of cancer presence. The primary classifier used in this algorithm is the convolutional neural network, which is a state-of-the-art classifier used in image classification as it can classify images without relying on the manual selection of features from each image. The main aim of this research is to improve the robustness of the classifier used by comparing six different first-order stochastic gradient-based optimizers to select the best for this particular dataset. The dataset used to train the classifier is the PatchCamelyon public dataset, which consists of 220,025 images to train the classifier; the dataset is composed of 60% positive images and 40% negative images, and 57,458 images to test its performance. The classifier was trained on 80% of the images and validated on the rest of 20% of the images; then, it was tested on the test set. The optimizers were evaluated based on their AUC of the ROC curve. The results show that the adaptative based optimizers achieved the highest results except for AdaGrad that achieved the lowest results.

Ključne besede

informatika;programiranje;prenos znanja;kognitivna znanost;neuroscience;

Podatki

Jezik: Angleški jezik
Leto izida:
Tipologija: 1.01 - Izvirni znanstveni članek
Organizacija: UL EF - Ekonomska fakulteta
UDK: 659.2:004
COBISS: 27679235 Povezava se bo odprla v novem oknu
ISSN: 2313-433X
Št. ogledov: 362
Št. prenosov: 134
Ocena: 0 (0 glasov)
Metapodatki: JSON JSON-RDF JSON-LD TURTLE N-TRIPLES XML RDFA MICRODATA DC-XML DC-RDF RDF

Ostali podatki

Sekundarni jezik: Slovenski jezik
Sekundarne ključne besede: informatika;programiranje;prenos znanja;kognitivna znanost;
Vrsta dela (COBISS): Članek v reviji
Strani: str. 1-17
Letnik: ǂVol. ǂ6
Zvezek: ǂiss ǂ9 (art. 92)
Čas izdaje: 2020
DOI: 10.3390/jimaging6090092
ID: 12044655