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AI in medical physics: guidelines for publication
43
Zitationen
9
Autoren
2021
Jahr
Abstract
The Abstract is intended to provide a concise summary of the study and its scientific findings. For AI/ML applications in medical physics, a problem statement and rationale for utilizing these algorithms are necessary while highlighting the novelty of the approach. A brief numerical description of how the data are partitioned into subsets for training of the AI/ML algorithm, validation (including tuning of parameters), and independent testing of algorithm performance is required. This is to be followed by a summary of the results and statistical metrics that quantify the performance of the AI/ML algorithm.
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Autoren
Institutionen
- Moffitt Cancer Center(US)
- University of California Davis Medical Center(US)
- University of California, Davis(US)
- UC Davis Health(US)
- University of Michigan(US)
- Warde Medical Laboratory(US)
- Michigan Medicine(US)
- University of Chicago(US)
- University of California, Los Angeles(US)
- UCLA Medical Center(US)
- Los Angeles Medical Center(US)
- United States Food and Drug Administration(US)
- Center for Drug Evaluation and Research(US)