Redirigiendo al acceso original de articulo en 22 segundos...
Inicio  /  Information  /  Vol: 12 Par: 8 (2021)  /  Artículo
ARTÍCULO
TITULO

Goal-Driven Visual Question Generation from Radiology Images

Mourad Sarrouti    
Asma Ben Abacha and Dina Demner-Fushman    

Resumen

Visual Question Generation (VQG) from images is a rising research topic in both fields of natural language processing and computer vision. Although there are some recent efforts towards generating questions from images in the open domain, the VQG task in the medical domain has not been well-studied so far due to the lack of labeled data. In this paper, we introduce a goal-driven VQG approach for radiology images called VQGRaD that generates questions targeting specific image aspects such as modality and abnormality. In particular, we study generating natural language questions based on the visual content of the image and on additional information such as the image caption and the question category. VQGRaD encodes the dense vectors of different inputs into two latent spaces, which allows generating, for a specific question category, relevant questions about the images, with or without their captions. We also explore the impact of domain knowledge incorporation (e.g., medical entities and semantic types) and data augmentation techniques on visual question generation in the medical domain. Experiments performed on the VQA-RAD dataset of clinical visual questions showed that VQGRaD achieves 61.86% BLEU score and outperforms strong baselines. We also performed a blinded human evaluation of the grammaticality, fluency, and relevance of the generated questions. The human evaluation demonstrated the better quality of VQGRaD outputs and showed that incorporating medical entities improves the quality of the generated questions. Using the test data and evaluation process of the ImageCLEF 2020 VQA-Med challenge, we found that relying on the proposed data augmentation technique to generate new training samples by applying different kinds of transformations, can mitigate the lack of data, avoid overfitting, and bring a substantial improvement in medical VQG.

 Artículos similares

       
 
Che-Wen Chen, Shih-Pang Tseng, Ta-Wen Kuan and Jhing-Fa Wang    
In general, patients who are unwell do not know with which outpatient department they should register, and can only get advice after they are diagnosed by a family doctor. This may cause a waste of time and medical resources. In this paper, we propose an... ver más
Revista: Information

 
Mika Salmi, Jan Sher Akmal, Eujin Pei, Jan Wolff, Alireza Jaribion and Siavash H. Khajavi    
The COVID-19 pandemic has caused a surge of demand for medical supplies and spare parts, which has put pressure on the manufacturing sector. As a result, 3D printing communities and companies are currently operating to ease the breakdown in the medical s... ver más
Revista: Applied Sciences

 
Elena Shchedrina,Elena Galkina,Irina Petunina,Richard Lushkov     Pág. pp. 19 - 37
Over the past few years, the teaching process has transformed radically under significant investments in information and communication technologies. In this context, mobile technologies emerge as an innovative educational tool. Mobile devices are being u... ver más

 
Hafiz Budi Firmansyah     Pág. 44 - 52
Abstract?In Indonesia the numbers of orthopaedic surgeons are still not able to cover all demand. Badan Pusat Statistik (2015) reported that there are merely two orthopaedic surgeons in Lampung province having to serve about 8.117.268 people. Meanwhile, ... ver más

 
Cristina Escudero-gómez, Montserrat Solís-muñoz, Margarita Alonso-durán     Pág. 63 - 76
To know the opinion of the users of the Hospital Puerta de Hierro Library with regard to services offered. Development: Observational, cross-sectional study performed in 2002, with a 28 questions questionnaire: 5 closed queries, 3 open queries and 20 gen... ver más