Publication | Open Access
Machine learning identifies girls with central precocious puberty based on multisource data
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Citations
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References
2020
Year
We developed three simplified models that use easily accessed clinical data before the GnRH stimulation test to identify girls who are at high risk of CPP. These models are tailored to the needs of patients in different clinical settings. Machine learning technologies and multisource data fusion can help to make a better diagnosis than traditional methods.
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