radiological image
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Author(s):  
Raúl Pedro Aceñero Eixarch ◽  
Raúl Díaz-Usechi Laplaza ◽  
Rafael Berlanga Llavori

This paper presents a study about screening large radiological image streams produced in hospitals for earlier detection of lung nodules. Being one of the most difficult classification tasks in the literature, our objective is to measure how well state-of-the-art classifiers can screen out the images stream to keep as many positive cases as possible in an output stream to be inspected by clinicians. We performed several experiments with different image resolutions and training datasets from different sources, always taking ResNet-152 as the base neural network. Results over existing datasets show that, contrary to other diseases like pneumonia, detecting nodules is a hard task when using only radiographies. Indeed, final diagnosis by clinicians is usually performed with much more precise images like computed tomographies.


2021 ◽  
Vol 8 (1) ◽  
Author(s):  
Hans Liebl ◽  
David Schinz ◽  
Anjany Sekuboyina ◽  
Luca Malagutti ◽  
Maximilian T. Löffler ◽  
...  

AbstractWith the advent of deep learning algorithms, fully automated radiological image analysis is within reach. In spine imaging, several atlas- and shape-based as well as deep learning segmentation algorithms have been proposed, allowing for subsequent automated analysis of morphology and pathology. The first “Large Scale Vertebrae Segmentation Challenge” (VerSe 2019) showed that these perform well on normal anatomy, but fail in variants not frequently present in the training dataset. Building on that experience, we report on the largely increased VerSe 2020 dataset and results from the second iteration of the VerSe challenge (MICCAI 2020, Lima, Peru). VerSe 2020 comprises annotated spine computed tomography (CT) images from 300 subjects with 4142 fully visualized and annotated vertebrae, collected across multiple centres from four different scanner manufacturers, enriched with cases that exhibit anatomical variants such as enumeration abnormalities (n = 77) and transitional vertebrae (n = 161). Metadata includes vertebral labelling information, voxel-level segmentation masks obtained with a human-machine hybrid algorithm and anatomical ratings, to enable the development and benchmarking of robust and accurate segmentation algorithms.


Diabetes Care ◽  
2021 ◽  
pp. dc211235
Author(s):  
Sara E. Frey ◽  
Jack E. Riggs
Keyword(s):  

PLoS ONE ◽  
2021 ◽  
Vol 16 (9) ◽  
pp. e0256849
Author(s):  
Ellen M. Kok ◽  
Bettina Sorger ◽  
Koos van Geel ◽  
Andreas Gegenfurtner ◽  
Jeroen J. G. van Merriënboer ◽  
...  

Radiologists can visually detect abnormalities on radiographs within 2s, a process that resembles holistic visual processing of faces. Interestingly, there is empirical evidence using functional magnetic resonance imaging (fMRI) for the involvement of the right fusiform face area (FFA) in visual-expertise tasks such as radiological image interpretation. The speed by which stimuli (e.g., faces, abnormalities) are recognized is an important characteristic of holistic processing. However, evidence for the involvement of the right FFA in holistic processing in radiology comes mostly from short or artificial tasks in which the quick, ‘holistic’ mode of diagnostic processing is not contrasted with the slower ‘search-to-find’ mode. In our fMRI study, we hypothesized that the right FFA responds selectively to the ‘holistic’ mode of diagnostic processing and less so to the ‘search-to-find’ mode. Eleven laypeople and 17 radiologists in training diagnosed 66 radiographs in 2s each (holistic mode) and subsequently checked their diagnosis in an extended (10-s) period (search-to-find mode). During data analysis, we first identified individual regions of interest (ROIs) for the right FFA using a localizer task. Then we employed ROI-based ANOVAs and obtained tentative support for the hypothesis that the right FFA shows more activation for radiologists in training versus laypeople, in particular in the holistic mode (i.e., during 2s trials), and less so in the search-to-find mode (i.e., during 10-s trials). No significant correlation was found between diagnostic performance (diagnostic accuracy) and brain-activation level within the right FFA for both, short-presentation and long-presentation diagnostic trials. Our results provide tentative evidence from a diagnostic-reasoning task that the FFA supports the holistic processing of visual stimuli in participants’ expertise domain.


2021 ◽  
Vol 8 (05) ◽  
Author(s):  
Sarina Wan ◽  
Benedicta D. Arhatari ◽  
Yakov I. Nesterets ◽  
Sheridan C. Mayo ◽  
Darren Thompson ◽  
...  

2021 ◽  
Vol 14 (3) ◽  
pp. e239194
Author(s):  
Toon FM Boselie ◽  
Jasper van Aalst ◽  
Julie Staals

Superficial siderosis is a rare disorder characterised by the deposition of haemosiderin on the surface of the central nervous system. Cognitive dysfunction has sporadically been reported in relation with superficial siderosis. We present a 61-year-old man with cognitive dysfunction in the presence of the typical radiological image of temporal and cerebellar superficial siderosis, most likely due to pseudomeningocoele 14 years after resection of a meningioma at the cervicothoracic junction. Xantochromia was present on cerebrospinal fluid investigation and a source of bleeding was seen during surgical exploration. Despite surgical treatment of the suspected bleeding source, the patient deteriorated and neuropsychological examination 1 year after surgery showed progression of cognitive dysfunction to dementia. It is likely that in the absence of other typical symptoms such as cerebellar ataxia and hearing loss, the cognitive dysfunction was not related to the superficial siderosis.


Author(s):  
Sumit Kumar ◽  
Jitesh Pradhan ◽  
Arup Kumar Pal ◽  
SK Hafizul Islam ◽  
Muhammad Khurram Khan

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