Litcius/Paper detail

Automatic Lung Nodule Detection Combined With Gaze Information Improves Radiologists’ Screening Performance

Guilherme Aresta, Carlos Ferreira, João Pedrosa, Teresa Araújo, João Rebelo, Eduardo Negrão, Margarida Morgado, Filipe Alves, A. Cunha, Isabel Ramos, Aurélio Campilho

2020IEEE Journal of Biomedical and Health Informatics31 citationsDOI

Abstract

Early diagnosis of lung cancer via computed tomography can significantly reduce the morbidity and mortality rates associated with the pathology. However, searching lung nodules is a high complexity task, which affects the success of screening programs. Whilst computer-aided detection systems can be used as second observers, they may bias radiologists and introduce significant time overheads. With this in mind, this study assesses the potential of using gaze information for integrating automatic detection systems in the clinical practice. For that purpose, 4 radiologists were asked to annotate 20 scans from a public dataset while being monitored by an eye tracker device, and an automatic lung nodule detection system was developed. Our results show that radiologists follow a similar search routine and tend to have lower fixation periods in regions where finding errors occur. The overall detection sensitivity of the specialists was 0.67±0.07, whereas the system achieved 0.69. Combining the annotations of one radiologist with the automatic system significantly improves the detection performance to similar levels of two annotators. Filtering automatic detection candidates only for low fixation regions still significantly improves the detection sensitivity without increasing the number of false-positives.

Topics & Concepts

False positive paradoxComputer scienceArtificial intelligenceNodule (geology)Lung cancer screeningFixation (population genetics)Computer visionGazeLung cancerCancer detectionRadiologyComputed tomographyMedicineCancerPathologyPopulationEnvironmental healthBiologyPaleontologyInternal medicineLung Cancer Diagnosis and TreatmentCOVID-19 diagnosis using AIAI in cancer detection