posted on 2021-08-20, 13:25authored byÁngela García-Fonseca, Cynthia Martin-Jimenez, George E. Barreto, Andres Felipe Aristizábal Pachón, Janneth González
Neurodegenerative diseases (NDs) are characterized by progressive neuronal dysfunction
and death of brain cells population. As the early manifestations of NDs are similar, their symptoms
are difficult to distinguish, making the timely detection and discrimination of each neurodegenerative
disorder a priority. Several investigations have revealed the importance of microRNAs and long
non-coding RNAs in neurodevelopment, brain function, maturation, and neuronal activity, as well
as its dysregulation involved in many types of neurological diseases. Therefore, the expression
pattern of these molecules in the different NDs have gained significant attention to improve the
diagnostic and treatment at earlier stages. In this sense, we gather the different microRNAs and
long non-coding RNAs that have been reported as dysregulated in each disorder. Since there are a
vast number of non-coding RNAs altered in NDs, some sort of synthesis, filtering and organization
method should be applied to extract the most relevant information. Hence, machine learning is
considered as an important tool for this purpose since it can classify expression profiles of non-coding
RNAs between healthy and sick people. Therefore, we deepen in this branch of computer science, its
different methods, and its meaningful application in the diagnosis of NDs from the dysregulated
non-coding RNAs. In addition, we demonstrate the relevance of machine learning in NDs from the
description of different investigations that showed an accuracy between 85% to 95% in the detection
of the disease with this tool. All of these denote that artificial intelligence could be an excellent
alternative to help the clinical diagnosis and facilitate the identification diseases in early stages based
on non-coding RNAs.