Context At RSNA 2017 there was a contest to correctly identify the age of a child from an X-ray of their hand. This is the dataset on Kaggle making it easier to experiment with and do educational demos. Additionally maybe there are some new ideas for building smarter models for handling X-ray images. Content A number of folders full of images (digital and scanned) with a CSV containing the age (what is to be predicted) and the gender (useful additional information) Acknowledgements The dataset was originally published on [CloudApp](http://rsnachallenges.cloudapp.net/competitions/4#results) as an RSNA challenge. Original Dataset Acknowledgements The Radiological Society of North America (RSNA) Radiology Informatics Committee (RIC) Pediatric Bone Age Machine Learning Challenge Organizing Committee: - Kathy Andriole, Massachusetts General Hospital - Brad Erickson, Mayo Clinic - Adam Flanders, Thomas Jefferson University - Safwan Halabi, Stanford University - Jayashree Kalpathy-Cramer, Massachusetts General Hospital - Marc Kohli, University of California - San Francisco - Luciano Prevedello, The Ohio State University Data sets used in the Pediatric Bone Age Challenge have been contributed by Stanford University, the University of Colorado and the University of California - Los Angeles. The MedICI platform (built CodaLab) used for the challenge is provided by Jayashree Kalpathy-Cramer, supported through NIH grants (U24CA180927) and a contract from Leidos. Inspiration - Can you predict with better than 4.2 months accuracy? - Is identifying the joints an important step? - What algorithms work best? - What do the algorithms focus on? - Is gender a necessary piece of information or can it be automatically derived from the image?