MSKCC Nomogram: Probability of lymph node involvement in prostate cancer patients (includes biopsy cores) April 2018 Update
Calculates the probability that prostate cancer has spread to the pelvic lymph nodes (c-index: 0.846). This model includes biopsy cores. 

Disqualifying treatments: This model does not apply to patients who underwent preoperative hormone- or radiation therapy for prostate cancer. 
Research authors: Source: Memorial Sloan Kettering Cancer Center (US)
Version: 1.2
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The calculated probability of lymph node involvement is:

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How this model should be used:
This model calculates the probability that prostate cancer has spread to the pelvic lymph nodes. The model does not apply to patients who underwent preoperative hormone- or radiation therapy for prostate cancer. 

Model performance: 
A validation was performed to assess the discriminative power of the model. On the website of the MSKCC, a c-index of 0.86 is reported. No specific details regarding the validation process are disclosed.

Alternative models: 
For cases in which the number of cores taken at biopsy is unknown, an alternative prediction model that does not require this information is available, although addition of biopsy core information did not improve the discriminative power of the model (c-index 0.85 in both models).


Source: Memorial Sloan Kettering Cancer Center.

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This model is provided for educational, training and information purposes. It must not be used to support medical decision making, or to provide medical or diagnostic services. Read our full disclaimer.

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