13 research outputs found
Long-term airborne measurements of pollutants over the United Kingdom to support air quality model development and evaluation
The ability of regional air quality models to skilfully represent pollutant
distributions throughout the atmospheric column is important to enabling
their skilful prediction at the surface. This provides a requirement for
model evaluation at elevated altitudes, though observation datasets
available for this purpose are limited. This is particularly true of those
offering sampling over extended time periods. To address this requirement
and support evaluation of regional air quality models such as the UK Met
Offices Air Quality in the Unified Model (AQUM), a long-term, quality-assured dataset of the three-dimensional distribution of key pollutants was collected over the southern United Kingdom from July 2019 to April
2022. Measurements were collected using the Met Office Atmospheric Survey
Aircraft (MOASA), a Cessna 421 instrumented for this project to measure
gaseous nitrogen dioxide, ozone, sulfur dioxide and fine-mode (PM2.5)
aerosol. This paper introduces the MOASA measurement platform, flight
strategies and instrumentation and is not intended to be an in-depth
diagnostic analysis but rather a comprehensive technical reference for
future users of these data. The MOASA air quality dataset includes 63 flight sorties (totalling over 150 h of sampling), the data from which are
openly available for use. To illustrate potential uses of these upper-air
observations for regional-scale model evaluation, example case studies are
presented, which include analyses of the spatial scales of measured
pollutant variability, a comparison of airborne to ground-based observations over Greater London and initial work to evaluate performance of the AQUM regional air quality model. These case studies show that, for observations of
relative humidity, nitrogen dioxide and particle counts, natural pollutant
variability is well observed by the aircraft, whereas SO2 variability
is limited by instrument precision. Good agreement is seen between
observations aloft and those on the ground, particularly for PM2.5.
Analysis of odd oxygen suggests titration of ozone is a dominant chemical
process throughout the column for the data analysed, although a slight
enhancement of ozone aloft is seen. Finally, a preliminary evaluation of
AQUM performance for two case studies suggests a large positive model bias
for ozone aloft, coincident with a negative model bias for NO2 aloft.
In one case, there is evidence that an underprediction in the modelled
boundary layer height contributes to the observed biases at elevated
altitudes.</p
Radiographers supporting radiologists in the interpretation of screening mammography: a viable strategy to meet the shortage in the number of radiologists.
BackgroundAn alternative approach to the traditional model of radiologists interpreting screening mammography is necessary due to the shortage of radiologists to interpret screening mammograms in many countries.MethodsWe evaluated the performance of 15 Mexican radiographers, also known as radiologic technologists, in the interpretation of screening mammography after a 6 months training period in a screening setting. Fifteen radiographers received 6 months standardized training with radiologists in the interpretation of screening mammography using the Breast Imaging Reporting and Data System (BI-RADS) system. A challenging test set of 110 cases developed by the Breast Cancer Surveillance Consortium was used to evaluate their performance. We estimated sensitivity, specificity, false positive rates, likelihood ratio of a positive test (LR+) and the area under the subject-specific Receiver Operating Characteristic (ROC) curve (AUC) for diagnostic accuracy. A mathematical model simulating the consequences in costs and performance of two hypothetical scenarios compared to the status quo in which a radiologist reads all screening mammograms was also performed.ResultsRadiographer's sensitivity was comparable to the sensitivity scores achieved by U.S. radiologists who took the test but their false-positive rate was higher. Median sensitivity was 73.3 % (Interquartile range, IQR: 46.7-86.7 %) and the median false positive rate was 49.5 % (IQR: 34.7-57.9 %). The median LR+ was 1.4 (IQR: 1.3-1.7 %) and the median AUC was 0.6 (IQR: 0.6-0.7). A scenario in which a radiographer reads all mammograms first, and a radiologist reads only those that were difficult for the radiographer, was more cost-effective than a scenario in which either the radiographer or radiologist reads all mammograms.ConclusionsGiven the comparable sensitivity achieved by Mexican radiographers and U.S. radiologists on a test set, screening mammography interpretation by radiographers appears to be a possible adjunct to radiologists in countries with shortages of radiologists. Further studies are required to assess the effectiveness of different training programs in order to obtain acceptable screening accuracy, as well as the best approaches for the use of non-physician readers to interpret screening mammography
Survival and Complications of Indwelling Venous Catheters for Permanent Use in Hemodialysis Patients
Computer-aided detection in full-field digital mammography in a clinical population: performance of radiologist and technologists
International audienceThe purpose of the study was to evaluate the impact of a computer-aided detection (CAD) system on the performance of mammogram readers in interpreting digital mammograms in a clinical population. Furthermore, the ability of a CAD system to detect breast cancer in digital mammography was studied in comparison to the performance of radiologists and technologists as mammogram readers. Digital mammograms of 1,048 consecutive patients were evaluated by a radiologist and three technologists. Abnormalities were recorded and an imaging conclusion was given as a BI-RADS score before and after CAD analysis. Pathology results during 12 months follow up were used as a reference standard for breast cancer. Fifty-one malignancies were found in 50 patients. Sensitivity and specificity were computed before and after CAD analysis and provided with 95% CIs. In order to assess the detection rate of malignancies by CAD and the observers, the pathological locations of these 51 breast cancers were matched with the locations of the CAD marks and the mammographic locations that were considered to be suspicious by the observers. For all observers, the sensitivity rates did not change after application of CAD. A mean sensitivity of 92% was found for all technologists and 84% for the radiologist. For two technologists, the specificity decreased (from 84 to 83% and from 77 to 75%). For the radiologist and one technologist, the application of CAD did not have any impact on the specificity rates (95 and 83%, respectively). CAD detected 78% of all malignancies. Five malignancies were indicated by CAD without being noticed as suspicious by the observers. In conclusion, the results show that systematic application of CAD in a clinical patient population failed to improve the overall sensitivity of mammogram interpretation by the readers and was associated with an increase in false-positive results. However, CAD marked five malignancies that were missed by the different readers