Systems and methods of clinical state prediction utilizing...

Image analysis – Applications – Biomedical applications

Reexamination Certificate

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C600S300000, C600S407000, C600S425000, C600S437000

Reexamination Certificate

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07899225

ABSTRACT:
There is provided a method for predicting a clinical state of a subject based on image data obtained from a Volume Of Interest in the subject. The method comprise the establishment of a predictive model that relates image features and the future evolution of a clinical state.

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