| Literature DB >> 32335763 |
Thomas Dratsch1, Liliana Caldeira1, David Maintz1, Daniel Pinto Dos Santos2.
Abstract
OBJECTIVES: To analyze all artificial intelligence abstracts presented at the European Congress of Radiology (ECR) 2019 with regard to their topics and their adherence to the Standards for Reporting Diagnostic accuracy studies (STARD) checklist.Entities:
Keywords: Artificial intelligence; Congresses as topic; Data reporting; Machine learning; Radiology
Year: 2020 PMID: 32335763 PMCID: PMC7183515 DOI: 10.1186/s13244-020-00866-7
Source DB: PubMed Journal: Insights Imaging ISSN: 1869-4101
STARD criteria for abstracts (adapted from Cohen et al. [13])
| Category | Item |
|---|---|
| Study uses at least one measure of diagnostic accuracy (e.g., sensitivity, specificity, predictive values, or AUC) | |
| Objectives of the study are clearly stated | |
| Provides information on whether the study was prospective or retrospective | |
| Eligibility criteria for participants and settings where the data were collected | |
| Consecutive, random, or convenience series | |
| Index test and reference standard | |
| Number of participants with and without target condition | |
| Estimates of diagnostic accuracy and their precision (CI) | |
| General interpretation of results | |
| Implications for practice | |
| Registration number and name of registry |
*Registration number was not coded for in the current investigation
Distribution of abstracts from participating countries
| Country | Number of abstracts | Percent |
|---|---|---|
| People’s Republic of China | 58 | 31.5 |
| Germany | 26 | 14.1 |
| India | 15 | 8.2 |
| USA | 12 | 6.5 |
| Netherlands | 11 | 6.0 |
| Italy | 9 | 4.9 |
| UK | 7 | 3.8 |
| Switzerland | 6 | 3.3 |
| Austria | 5 | 2.7 |
| Taiwan | 4 | 2.2 |
| Japan | 3 | 1.6 |
| Republic of Korea | 3 | 1.6 |
| Spain | 3 | 1.6 |
| Brazil | 2 | 1.1 |
| Canada | 2 | 1.1 |
| France | 2 | 1.1 |
| Greece | 2 | 1.1 |
| Hungary | 2 | 1.1 |
| Israel | 2 | 1.1 |
| Lithuania | 2 | 1.1 |
| Turkey | 2 | 1.1 |
| Belgium | 1 | 0.5 |
| Hong Kong | 1 | 0.5 |
| Poland | 1 | 0.5 |
| Portugal | 1 | 0.5 |
| Russian Federation | 1 | 0.5 |
| Saudi Arabia | 1 | 0.5 |
Modalities featured in accepted abstracts
| Modality | Number of abstracts | Percent |
|---|---|---|
| CT | 87 | 47.3 |
| MRI | 47 | 25.5 |
| Plain radiography | 17 | 9.2 |
| Mammography | 9 | 4.9 |
| Ultrasound | 8 | 4.3 |
| Nuclear medicine | 6 | 3.3 |
| Text analysis | 4 | 2.2 |
| Other | 3 | 1.6 |
| Not available | 3 | 1.6 |
Body regions featured in accepted abstracts
| Body region | Number of abstracts | Percent |
|---|---|---|
| Abdomen | 43 | 23.4 |
| Chest | 42 | 22.8 |
| Brain | 32 | 17.4 |
| Breast | 14 | 7.6 |
| Cardiac | 9 | 4.9 |
| General | 7 | 3.8 |
| Head/neck | 7 | 3.8 |
| MSK | 7 | 3.8 |
| Prostate | 7 | 3.8 |
| Vascular | 6 | 3.3 |
| Other | 5 | 2.7 |
| Genitourinary | 3 | 1.6 |
| Spine | 2 | 1.1 |
Use cases of machine learning techniques
| Task | Number of abstracts | Percent |
|---|---|---|
| Classification | 67 | 36.4 |
| Classification (radiomics) | 41 | 22.3 |
| Segmentation | 32 | 17.4 |
| Technical | 21 | 11.4 |
| Detection | 13 | 7.1 |
| Technical (radiomics) | 6 | 3.3 |
| Other | 4 | 2.2 |
Fig. 1Histogram showing the number of STARD criteria reported by each abstract
Fig. 2Percent of abstracts that reported individual STARD criteria
Fig. 3Percent of abstracts that reported additional quality criteria