Matches in SemOpenAlex for { <https://semopenalex.org/work/W4387307331> ?p ?o ?g. }
Showing items 1 to 96 of
96
with 100 items per page.
- W4387307331 abstract "Abstract Detecting lung pathologies is critical for precise medical diagnosis. In the realm of diagnostic methods, various approaches, including imaging tests, physical examinations, and laboratory tests, contribute to this process. Of particular note, imaging techniques like X-rays, CT scans, and MRI scans play a pivotal role in identifying lung pathologies with their non-invasive insights. Deep learning, a subset of artificial intelligence, holds significant promise in revolutionizing the detection and diagnosis of lung pathologies. By leveraging expansive datasets, deep learning algorithms autonomously discern intricate patterns and features within medical images, such as chest X-rays and CT scans. These algorithms exhibit an exceptional capacity to recognize subtle markers indicative of lung diseases. Yet, while their potential is evident, inherent limitations persist. The demand for abundant labeled data during training and the susceptibility to data biases challenge their accuracy. To address these formidable challenges, this research introduces a tailored computer-assisted system designed for the automatic retrieval of annotated medical images that share similar content. At its core lies an intelligent deep learning-based features extractor, adept at simplifying the retrieval of analogous images from an extensive chest radiograph database. The crux of our innovation rests upon the fusion of YOLOv5 and EfficientNet within the features extractor module. This strategic fusion synergizes YOLOv5's rapid and efficient object detection capabilities with EfficientNet's proficiency in combating noisy predictions. The result is a distinctive amalgamation that redefines the efficiency and accuracy of features extraction. Through rigorous experimentation conducted on an extensive and diverse dataset, our proposed solution decisively surpasses conventional methodologies. The model's achievement of a mean average precision of 0.488 with a threshold of 0.9 stands as a testament to its effectiveness, overshadowing the results of YOLOv5 + ResNet and EfficientDet, which achieved 0.234 and 0.257 respectively. Furthermore, our model demonstrates a marked precision improvement, attaining a value of 0.864 across all pathologies—a noteworthy leap of approximately 0.352 compared to YOLOv5 + ResNet and EfficientDet. This research presents a significant stride toward enhancing radiologists' workflow efficiency, offering a refined and proficient tool for retrieving analogous annotated medical images." @default.
- W4387307331 created "2023-10-04" @default.
- W4387307331 creator A5000681220 @default.
- W4387307331 creator A5022692347 @default.
- W4387307331 creator A5031951295 @default.
- W4387307331 creator A5059877458 @default.
- W4387307331 creator A5060832078 @default.
- W4387307331 creator A5068344324 @default.
- W4387307331 creator A5077504804 @default.
- W4387307331 date "2023-10-03" @default.
- W4387307331 modified "2023-10-18" @default.
- W4387307331 title "Improving diagnosis accuracy with an intelligent image retrieval system for lung pathologies detection: a features extractor approach" @default.
- W4387307331 cites W2165839911 @default.
- W4387307331 cites W2511730936 @default.
- W4387307331 cites W2559794190 @default.
- W4387307331 cites W2963037989 @default.
- W4387307331 cites W2963466845 @default.
- W4387307331 cites W3013798510 @default.
- W4387307331 cites W3042011474 @default.
- W4387307331 cites W3045207461 @default.
- W4387307331 cites W3080833865 @default.
- W4387307331 cites W3093149564 @default.
- W4387307331 cites W3114128166 @default.
- W4387307331 cites W3124375766 @default.
- W4387307331 cites W3127743092 @default.
- W4387307331 cites W3138881922 @default.
- W4387307331 cites W3159693056 @default.
- W4387307331 cites W3198276338 @default.
- W4387307331 cites W3205172723 @default.
- W4387307331 cites W3211848309 @default.
- W4387307331 cites W4200002188 @default.
- W4387307331 cites W4225134106 @default.
- W4387307331 cites W4282000784 @default.
- W4387307331 cites W4285813924 @default.
- W4387307331 cites W4288033489 @default.
- W4387307331 cites W4288696367 @default.
- W4387307331 cites W4297808650 @default.
- W4387307331 cites W4301076899 @default.
- W4387307331 cites W4303444951 @default.
- W4387307331 cites W4310706120 @default.
- W4387307331 cites W4312870905 @default.
- W4387307331 doi "https://doi.org/10.1038/s41598-023-42366-w" @default.
- W4387307331 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/37789095" @default.
- W4387307331 hasPublicationYear "2023" @default.
- W4387307331 type Work @default.
- W4387307331 citedByCount "0" @default.
- W4387307331 crossrefType "journal-article" @default.
- W4387307331 hasAuthorship W4387307331A5000681220 @default.
- W4387307331 hasAuthorship W4387307331A5022692347 @default.
- W4387307331 hasAuthorship W4387307331A5031951295 @default.
- W4387307331 hasAuthorship W4387307331A5059877458 @default.
- W4387307331 hasAuthorship W4387307331A5060832078 @default.
- W4387307331 hasAuthorship W4387307331A5068344324 @default.
- W4387307331 hasAuthorship W4387307331A5077504804 @default.
- W4387307331 hasBestOaLocation W43873073311 @default.
- W4387307331 hasConcept C108583219 @default.
- W4387307331 hasConcept C111919701 @default.
- W4387307331 hasConcept C117978034 @default.
- W4387307331 hasConcept C119857082 @default.
- W4387307331 hasConcept C127413603 @default.
- W4387307331 hasConcept C153180895 @default.
- W4387307331 hasConcept C154945302 @default.
- W4387307331 hasConcept C21880701 @default.
- W4387307331 hasConcept C31601959 @default.
- W4387307331 hasConcept C41008148 @default.
- W4387307331 hasConcept C98045186 @default.
- W4387307331 hasConceptScore W4387307331C108583219 @default.
- W4387307331 hasConceptScore W4387307331C111919701 @default.
- W4387307331 hasConceptScore W4387307331C117978034 @default.
- W4387307331 hasConceptScore W4387307331C119857082 @default.
- W4387307331 hasConceptScore W4387307331C127413603 @default.
- W4387307331 hasConceptScore W4387307331C153180895 @default.
- W4387307331 hasConceptScore W4387307331C154945302 @default.
- W4387307331 hasConceptScore W4387307331C21880701 @default.
- W4387307331 hasConceptScore W4387307331C31601959 @default.
- W4387307331 hasConceptScore W4387307331C41008148 @default.
- W4387307331 hasConceptScore W4387307331C98045186 @default.
- W4387307331 hasIssue "1" @default.
- W4387307331 hasLocation W43873073311 @default.
- W4387307331 hasLocation W43873073312 @default.
- W4387307331 hasOpenAccess W4387307331 @default.
- W4387307331 hasPrimaryLocation W43873073311 @default.
- W4387307331 hasRelatedWork W1979583797 @default.
- W4387307331 hasRelatedWork W2372254676 @default.
- W4387307331 hasRelatedWork W2793679056 @default.
- W4387307331 hasRelatedWork W3003847115 @default.
- W4387307331 hasRelatedWork W3024479225 @default.
- W4387307331 hasRelatedWork W3082848404 @default.
- W4387307331 hasRelatedWork W3133954817 @default.
- W4387307331 hasRelatedWork W3171371563 @default.
- W4387307331 hasRelatedWork W4375867731 @default.
- W4387307331 hasRelatedWork W4380075502 @default.
- W4387307331 hasVolume "13" @default.
- W4387307331 isParatext "false" @default.
- W4387307331 isRetracted "false" @default.
- W4387307331 workType "article" @default.