Cargando…
Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy
Background: Hereditary transthyretin amyloidosis with polyneuropathy (ATTRv) is an adult-onset multisystemic disease, affecting the peripheral nerves, heart, gastrointestinal tract, eyes, and kidneys. Nowadays, several treatment options are available; thus, avoiding misdiagnosis is crucial to starti...
Autores principales: | , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
MDPI
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10216819/ https://www.ncbi.nlm.nih.gov/pubmed/37239276 http://dx.doi.org/10.3390/brainsci13050805 |
_version_ | 1785048389164990464 |
---|---|
author | Di Stefano, Vincenzo Prinzi, Francesco Luigetti, Marco Russo, Massimo Tozza, Stefano Alonge, Paolo Romano, Angela Sciarrone, Maria Ausilia Vitali, Francesca Mazzeo, Anna Gentile, Luca Palumbo, Giovanni Manganelli, Fiore Vitabile, Salvatore Brighina, Filippo |
author_facet | Di Stefano, Vincenzo Prinzi, Francesco Luigetti, Marco Russo, Massimo Tozza, Stefano Alonge, Paolo Romano, Angela Sciarrone, Maria Ausilia Vitali, Francesca Mazzeo, Anna Gentile, Luca Palumbo, Giovanni Manganelli, Fiore Vitabile, Salvatore Brighina, Filippo |
author_sort | Di Stefano, Vincenzo |
collection | PubMed |
description | Background: Hereditary transthyretin amyloidosis with polyneuropathy (ATTRv) is an adult-onset multisystemic disease, affecting the peripheral nerves, heart, gastrointestinal tract, eyes, and kidneys. Nowadays, several treatment options are available; thus, avoiding misdiagnosis is crucial to starting therapy in early disease stages. However, clinical diagnosis may be difficult, as the disease may present with unspecific symptoms and signs. We hypothesize that the diagnostic process may benefit from the use of machine learning (ML). Methods: 397 patients referring to neuromuscular clinics in 4 centers from the south of Italy with neuropathy and at least 1 more red flag, as well as undergoing genetic testing for ATTRv, were considered. Then, only probands were considered for analysis. Hence, a cohort of 184 patients, 93 with positive and 91 (age- and sex-matched) with negative genetics, was considered for the classification task. The XGBoost (XGB) algorithm was trained to classify positive and negative TTR mutation patients. The SHAP method was used as an explainable artificial intelligence algorithm to interpret the model findings. Results: diabetes, gender, unexplained weight loss, cardiomyopathy, bilateral carpal tunnel syndrome (CTS), ocular symptoms, autonomic symptoms, ataxia, renal dysfunction, lumbar canal stenosis, and history of autoimmunity were used for the model training. The XGB model showed an accuracy of 0.707 ± 0.101, a sensitivity of 0.712 ± 0.147, a specificity of 0.704 ± 0.150, and an AUC-ROC of 0.752 ± 0.107. Using the SHAP explanation, it was confirmed that unexplained weight loss, gastrointestinal symptoms, and cardiomyopathy showed a significant association with the genetic diagnosis of ATTRv, while bilateral CTS, diabetes, autoimmunity, and ocular and renal involvement were associated with a negative genetic test. Conclusions: Our data show that ML might potentially be a useful instrument to identify patients with neuropathy that should undergo genetic testing for ATTRv. Unexplained weight loss and cardiomyopathy are relevant red flags in ATTRv in the south of Italy. Further studies are needed to confirm these findings. |
format | Online Article Text |
id | pubmed-10216819 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | MDPI |
record_format | MEDLINE/PubMed |
spelling | pubmed-102168192023-05-27 Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy Di Stefano, Vincenzo Prinzi, Francesco Luigetti, Marco Russo, Massimo Tozza, Stefano Alonge, Paolo Romano, Angela Sciarrone, Maria Ausilia Vitali, Francesca Mazzeo, Anna Gentile, Luca Palumbo, Giovanni Manganelli, Fiore Vitabile, Salvatore Brighina, Filippo Brain Sci Article Background: Hereditary transthyretin amyloidosis with polyneuropathy (ATTRv) is an adult-onset multisystemic disease, affecting the peripheral nerves, heart, gastrointestinal tract, eyes, and kidneys. Nowadays, several treatment options are available; thus, avoiding misdiagnosis is crucial to starting therapy in early disease stages. However, clinical diagnosis may be difficult, as the disease may present with unspecific symptoms and signs. We hypothesize that the diagnostic process may benefit from the use of machine learning (ML). Methods: 397 patients referring to neuromuscular clinics in 4 centers from the south of Italy with neuropathy and at least 1 more red flag, as well as undergoing genetic testing for ATTRv, were considered. Then, only probands were considered for analysis. Hence, a cohort of 184 patients, 93 with positive and 91 (age- and sex-matched) with negative genetics, was considered for the classification task. The XGBoost (XGB) algorithm was trained to classify positive and negative TTR mutation patients. The SHAP method was used as an explainable artificial intelligence algorithm to interpret the model findings. Results: diabetes, gender, unexplained weight loss, cardiomyopathy, bilateral carpal tunnel syndrome (CTS), ocular symptoms, autonomic symptoms, ataxia, renal dysfunction, lumbar canal stenosis, and history of autoimmunity were used for the model training. The XGB model showed an accuracy of 0.707 ± 0.101, a sensitivity of 0.712 ± 0.147, a specificity of 0.704 ± 0.150, and an AUC-ROC of 0.752 ± 0.107. Using the SHAP explanation, it was confirmed that unexplained weight loss, gastrointestinal symptoms, and cardiomyopathy showed a significant association with the genetic diagnosis of ATTRv, while bilateral CTS, diabetes, autoimmunity, and ocular and renal involvement were associated with a negative genetic test. Conclusions: Our data show that ML might potentially be a useful instrument to identify patients with neuropathy that should undergo genetic testing for ATTRv. Unexplained weight loss and cardiomyopathy are relevant red flags in ATTRv in the south of Italy. Further studies are needed to confirm these findings. MDPI 2023-05-16 /pmc/articles/PMC10216819/ /pubmed/37239276 http://dx.doi.org/10.3390/brainsci13050805 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). |
spellingShingle | Article Di Stefano, Vincenzo Prinzi, Francesco Luigetti, Marco Russo, Massimo Tozza, Stefano Alonge, Paolo Romano, Angela Sciarrone, Maria Ausilia Vitali, Francesca Mazzeo, Anna Gentile, Luca Palumbo, Giovanni Manganelli, Fiore Vitabile, Salvatore Brighina, Filippo Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title | Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title_full | Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title_fullStr | Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title_full_unstemmed | Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title_short | Machine Learning for Early Diagnosis of ATTRv Amyloidosis in Non-Endemic Areas: A Multicenter Study from Italy |
title_sort | machine learning for early diagnosis of attrv amyloidosis in non-endemic areas: a multicenter study from italy |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10216819/ https://www.ncbi.nlm.nih.gov/pubmed/37239276 http://dx.doi.org/10.3390/brainsci13050805 |
work_keys_str_mv | AT distefanovincenzo machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT prinzifrancesco machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT luigettimarco machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT russomassimo machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT tozzastefano machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT alongepaolo machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT romanoangela machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT sciarronemariaausilia machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT vitalifrancesca machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT mazzeoanna machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT gentileluca machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT palumbogiovanni machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT manganellifiore machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT vitabilesalvatore machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly AT brighinafilippo machinelearningforearlydiagnosisofattrvamyloidosisinnonendemicareasamulticenterstudyfromitaly |