Radiologists can discriminate between normal and abnormal breast tissue at a glance, suggesting that radiologists might be using some “global signal” of abnormality. Our study investigated whether texture descriptions can be used to characterize the global signal of abnormality and whether radiologists use this information during interpretation. Synthetic images were generated using a texture synthesis algorithm trained on texture descriptions extracted from sections of mammograms. Radiologists completed a task that required rating the abnormality of briefly presented tissue sections. When the abnormal tissue had no visible lesion, radiologists seemed to use texture descriptions; performance was similar across real and synthesized tissue se...
Purpose: To determine the potential of mammography (MG) and mammographic texture analysis in differe...
Contains fulltext : 137402.pdf (publisher's version ) (Open Access)Breast density ...
Extraction of global structural regularities provides general ‘gist’ of our everyday visual environm...
Computer-aided diagnosis schemes are being developed to assist radiologists in mammographic interpre...
Humans are very adept at extracting the “gist” of a scene in a fraction of a second. We have found t...
Humans are very adept at extracting the “gist” of a scene in a fraction of a second. We have found t...
The identification of glandular tissue in breast X-rays (mammograms) is import-ant both in assessing...
The authors studied the effectiveness of using texture features derived from spatial grey level depe...
oai:elcvia.revistes.uab.cat:article/59This paper presents an electronic second opinion system for th...
J. Daugman and C. Downing introduced a new method (see "Spatial Vision in Humans and Robots: The Pro...
This research is partially funded by Cancer Research UK (grant number C569/ A16891). This work was ...
We investigated the feasibility of using texture features extracted from mammograms to predict wheth...
BACKGROUND: The percentage of mammographic dense tissue (PD) is an important risk factor for breast ...
This thesis presents novel descriptive multidimensional Markovian textural models applied to compute...
Radiologists can detect abnormality in mammograms at above-chance levels after a momentary glimpse o...
Purpose: To determine the potential of mammography (MG) and mammographic texture analysis in differe...
Contains fulltext : 137402.pdf (publisher's version ) (Open Access)Breast density ...
Extraction of global structural regularities provides general ‘gist’ of our everyday visual environm...
Computer-aided diagnosis schemes are being developed to assist radiologists in mammographic interpre...
Humans are very adept at extracting the “gist” of a scene in a fraction of a second. We have found t...
Humans are very adept at extracting the “gist” of a scene in a fraction of a second. We have found t...
The identification of glandular tissue in breast X-rays (mammograms) is import-ant both in assessing...
The authors studied the effectiveness of using texture features derived from spatial grey level depe...
oai:elcvia.revistes.uab.cat:article/59This paper presents an electronic second opinion system for th...
J. Daugman and C. Downing introduced a new method (see "Spatial Vision in Humans and Robots: The Pro...
This research is partially funded by Cancer Research UK (grant number C569/ A16891). This work was ...
We investigated the feasibility of using texture features extracted from mammograms to predict wheth...
BACKGROUND: The percentage of mammographic dense tissue (PD) is an important risk factor for breast ...
This thesis presents novel descriptive multidimensional Markovian textural models applied to compute...
Radiologists can detect abnormality in mammograms at above-chance levels after a momentary glimpse o...
Purpose: To determine the potential of mammography (MG) and mammographic texture analysis in differe...
Contains fulltext : 137402.pdf (publisher's version ) (Open Access)Breast density ...
Extraction of global structural regularities provides general ‘gist’ of our everyday visual environm...