Difference between revisions of "File:Fig8 Kapoor JofAppCliMedPhys2023 24-10.jpg"
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==Summary== | |||
{{Information | |||
|Description='''Figure 8.''' '''(A)''' Annotation embeddings produced by Word2Vec, Doc2Vec, GloVe, and FastText, a 2D-image of the embeddings projected down to three dimensions using the T-SNE technique. Each point indicates one patient, and color of a point indicates the cohort of the patient based on the diagnosis-based cluster. A good visualization result is that the points of the same color are near each other. '''(B)''' Results of the evaluation metrics used to measure patient similarity. The Word2Vec model had the best cosine similarity, and the GloVe model had the best Euclidean, Manhattan, and Minkowski distance, suggesting that patient embeddings derived from this model were more compact and closer in proximity. | |||
|Source={{cite journal |title=Infrastructure tools to support an effective radiation oncology learning health system |journal=Journal of Applied Clinical Medical Physics |author=Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder |volume=24 |issue=10 |at=e14127 |year=2023 |doi=10.1002/acm2.14127}} | |||
|Author=Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder | |||
|Date=2023 | |||
|Permission=[https://creativecommons.org/licenses/by/4.0/ Creative Commons Attribution 4.0 International] | |||
}} | |||
== Licensing == | == Licensing == | ||
{{cc-by-4.0}} | {{cc-by-4.0}} |
Latest revision as of 01:11, 10 May 2024
Summary
Description |
Figure 8. (A) Annotation embeddings produced by Word2Vec, Doc2Vec, GloVe, and FastText, a 2D-image of the embeddings projected down to three dimensions using the T-SNE technique. Each point indicates one patient, and color of a point indicates the cohort of the patient based on the diagnosis-based cluster. A good visualization result is that the points of the same color are near each other. (B) Results of the evaluation metrics used to measure patient similarity. The Word2Vec model had the best cosine similarity, and the GloVe model had the best Euclidean, Manhattan, and Minkowski distance, suggesting that patient embeddings derived from this model were more compact and closer in proximity. |
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Source |
Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder (2023). "Infrastructure tools to support an effective radiation oncology learning health system". Journal of Applied Clinical Medical Physics 24 (10): e14127. doi:10.1002/acm2.14127. |
Date |
2023 |
Author |
Kapoor, Rishabh; Sleeman IV, William C.; Ghosh, Preetam; Palta, Jatinder |
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This work is licensed under the Creative Commons Attribution 4.0 License. |
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