Abstract

Procedures and models of computerized data analysis are becoming researchers' and practitioners' thinking partners by transforming the reasoning underlying biomedicine. Complexity theory, Network analysis and Artificial Intelligence are already approaching this discipline, intending to provide support for patient's diagnosis, prognosis and treatments. At the same time, due to the sparsity, noisiness and time‐dependency of medical data, such procedures are raising many unprecedented problems related to the mismatch between the human mind's reasoning and the outputs of computational models. Thanks to these computational, non‐anthropocentric models, a patient's clinical situation can be elucidated in the orthodontic discipline, and the growth outcome can be approximated. However, to have confidence in these procedures, orthodontists should be warned of the related benefits and risks. Here we want to present how these innovative approaches can derive better patients' characterization, also offering a different point of view about patient's classification, prognosis and treatment.

Highlights

  • The technological revolution we have been experiencing in the last decades impacted medical sciences in various ways

  • From an initial data set of patient's characteristics (‘learning set’), Artificial Intelligence (AI) algorithms learn how the features relate to and predict the outcome

  • Using Artificial Neural Network procedures, the correlation between early craniofacial features and the risk of craniofacial worsening during growth was established in 43 orthodontic patients.[14]

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Summary

Introduction

The technological revolution we have been experiencing in the last decades impacted medical sciences in various ways.

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