While at least read speech corpora are available for Italian childrens speech research, there exist many languages which completely lack childrens speech corpora. We propose that learning statistical mappings between the adult and child acoustic space using existing adult/children corpora may provide a future direction for generating childrens models for such data deficient languages. In this work the recent advances in the development of the SONIC Italian childrens speech recognition system will be described. This work, completing a previous one developed in the past, was conducted with the specific goals of integrating the newly trained childrens speech recognition models into the Italian version of the Colorado Literacy Tutor platform. Specifically, childrens speech recognition research for Italian was conducted using the complete training and test set of the FBK (ex ITC-irst) Italian Childrens Speech Corpus (ChildIt). Using the University of Colorado SONIC LVSR system, we demonstrate a phonetic recognition error rate of 12,0% for a system which incorporates Vocal Tract Length Normalization (VTLN), Speaker-Adaptive Trained phonetic models, as well as unsupervised Structural MAP Linear Regression (SMAPLR).