| Literature DB >> 29740722 |
Jonathan Christopher Taylor1, Charles Romanowski2, Eleanor Lorenz3, Christine Lo4, Oliver Bandmann5, John Fenner6.
Abstract
BACKGROUND: For (123I)FP-CIT imaging, a number of algorithms have shown high performance in distinguishing normal patient images from those with disease, but none have yet been tested as part of reporting workflows. This study aims to evaluate the impact on reporters' performance of a computer-aided diagnosis (CADx) tool developed from established machine learning technology. Three experienced (123I)FP-CIT reporters (two radiologists and one clinical scientist) were asked to visually score 155 reconstructed clinical and research images on a 5-point diagnostic confidence scale (read 1). Once completed, the process was then repeated (read 2). Immediately after submitting each image score for a second time, the CADx system output was displayed to reporters alongside the image data. With this information available, the reporters submitted a score for the third time (read 3). Comparisons between reads 1 and 2 provided evidence of intra-operator reliability, and differences between reads 2 and 3 showed the impact of the CADx.Entities:
Keywords: (123I)FP-CIT; Computer-aided diagnosis; Machine learning; Support vector machine
Year: 2018 PMID: 29740722 PMCID: PMC5940985 DOI: 10.1186/s13550-018-0393-5
Source DB: PubMed Journal: EJNMMI Res ISSN: 2191-219X Impact factor: 3.138
Summary of the acquisition and patient preparation parameters for the local and PPMI databases
| Parameter | Local database | PPMI database |
|---|---|---|
| Administered activity | 167–185 MBq | 111–185 MBq |
| Injection-to-scan delay | 3–6 h | 3.5–4.5 h |
| Acquisition time | 30 min | 30–45 min |
| Acquisition pixel size | 3.68 mm | Variable (scanner dependent) |
| Number of projections | 120 (over 360°) | 90 or 120 (over 360°) |
| Energy window | 159 keV ± 10% | 159 keV ± 10% and 122 keV ± 10% |
| Collimator | LEHR | Variable (scanner dependent) |
Fig. 1Display presented to reporters. Screenshot of the display presented to reporters during the study (in this case, the CADx output is visible)
Fig. 2Overview of study methodology. Repeated for both the local and PPMI data
Fig. 3Diagnostic accuracy figures for the the image reads. Diagnostic accuracy figures for the three image reads, for local data (a) and PPMI data (b). Standalone CADx performance is also shown, for comparison
Fig. 4Sensitivity figures for the three image reads. Sensitivity figures for the three image reads, for local data (a) and PPMI data (b). Standalone CADx performance is also shown, for comparison
Fig. 5Specificity figures for the three image reads. Specificity figures for the three image reads, for local data (a) and PPMI data (b). Standalone CADx performance is also shown, for comparison
Intra-reporter reliability (ICC) results for all reporters, with 95% confidence intervals (CI), for PPMI data and local data
| Intra-reporter reliability | ||||||
|---|---|---|---|---|---|---|
| PPMI | Local | |||||
| Reporter | ICC | 95% CI (lower) | 95% CI (upper) | ICC | 95% CI (lower) | 95% CI (upper) |
| Rad1 | 0.87 | 0.82 | 0.91 | 0.89 | 0.82 | 0.93 |
| Rad2 | 0.95 | 0.92 | 0.96 | 0.93 | 0.88 | 0.96 |
| CS1 | 0.91 | 0.87 | 0.94 | 0.88 | 0.80 | 0.93 |
Fig. 6Inter-reporter reliability (ICC) results for each of the three image reads. Inter-reporter reliability (ICC) results for each of the three image reads for PPMI data and local data. Graph (a) is derived from radiologist data only (Rad1 and Rad2); graph (b) is from all reporters. Whiskers represent 95% confidence intervals
Summary of responses to the questionnaire (restricted response categories only)
| Question | Responses | ||||
|---|---|---|---|---|---|
| A lot | Moderately | A little | Not at all | Unsure | |
| In general, how well did your initial reporting decisions correlate with the CADx output? | Rad1 | – | – | – | – |
| Rad2 | |||||
| CS1 | |||||
| Substantial impact | Moderate impact | Small impact | No impact | Unsure | |
| In general, how would you rate the impact of the CADx algorithm on your reporting decisions? | – | Rad1 | Rad2 | – | – |
| CS1 | |||||
| CADx | Semi-quant | Both | Unsure | ||
| Would you prefer to have CADx for assistive DaTSCAN reporting or semi-quantification? Or Both? | – | – | Rad1 | – | |
| Rad2 | |||||
| CS1 | |||||
| Yes (substantial benefit) | Yes (moderate benefit) | Yes (small benefit) | No | Unsure | |
| Would it benefit you if the CADx system also provided information on how it came to its decision (e.g. reduced putamen uptake, high background uptake) | – | CS1 | Rad1 | – | – |
| Rad2 | |||||
| Substantial benefit | Moderate benefit | Small benefit | No benefit | Unsure | |
| To what extent would the CADx system be a useful training tool to improve DaTSCAN reporting performance for inexperienced clinicians? | Rad2 | Rad1 | – | – | CS1 |