Machine Learning-based Prediction Model for Treatment of Acromegaly With First-generation Somatostatin Receptor Ligands

Author:

Wildemberg Luiz Eduardo12ORCID,da Silva Camacho Aline Helen3,Miranda Renan Lyra3,Elias Paula C L4,de Castro Musolino Nina R5,Nazato Debora6,Jallad Raquel78,Huayllas Martha K P9,Mota Jose Italo S10,Almeida Tobias11,Portes Evandro12,Ribeiro-Oliveira Antonio13,Vilar Lucio14,Boguszewski Cesar Luiz15,Winter Tavares Ana Beatriz16,Nunes-Nogueira Vania S17,Mazzuco Tânia Longo18,Rech Carolina Garcia Soares Leães19,Marques Nelma Veronica1,Chimelli Leila3ORCID,Czepielewski Mauro11,Bronstein Marcello D78,Abucham Julio6,de Castro Margaret4,Kasuki Leandro12,Gadelha Mônica123ORCID

Affiliation:

1. Endocrine Unit and Neuroendocrinology Research Center, Medical School and Hospital Universitário Clementino Fraga Filho—Universidade Federal do Rio de Janeiro, Rio de Janeiro, RJ, Brazil

2. Neuroendocrine Unit—Instituto Estadual do Cérebro Paulo Niemeyer, Secretaria Estadual de Saúde , Rio de Janeiro, RJ, Brazil

3. Neuropathology and Molecular Genetics Laboratory, Instituto Estadual do Cérebro Paulo Niemeyer, Secretaria Estadual de Saúde, Rio de Janeiro, RJ, Brazil

4. Division of Endocrinology—Department of Internal Medicine, Ribeirao Preto Medical School—University of Sao Paulo, São Paulo, SP, Brazil

5. Neuroendocrine Unit, Division of Functional Neurosurgery, Hospital das Clinicas, Faculdade de Medicina, Universidade de São Paulo, São Paulo, SP, Brazil

6. Neuroendocrine Unit—Division of Endocrinology and Metabolism—Escola Paulista de Medicina—Universidade Federal de São Paulo (Unifesp), São Paulo, SP, Brazil

7. Neuroendocrine Unit, Division of Endocrinology and Metabolism, Hospital das Clínicas, University of São Paulo Medical School, São Paulo, SP, Brazil

8. Cellular and Molecular Endocrinology Laboratory/LIM25, Discipline of Endocrinology, Hospital das Clinicas HCFMUSP, Faculty of Medicine, University of Sao Paulo, São Paulo, SP, Brazil

9. Neuroendocrinology and Neurosurgery unit Hospital Brigadeiro, São Paulo, SP, Brazil

10. Endocrinology and Metabolism Unit, Hospital Geral de Fortaleza, Secretaria Estadual de Saúde, Fortaleza, CE, Brazil

11. Division of Endocrinology, Hospital de Clinicas de Porto Alegre (UFRGS), Porto Alegre, RS, Brazil

12. Institute of Medical Assistance to the State Public Hospital, São Paulo, SP, Brazil

13. Faculdade de Medicina, Universidade Federal de Minas Gerais, Belo Horizonte, MG, Brazil

14. Neuroendocrine Unit, Division of Endocrinology and Metabolism, Hospital das Clínicas, Federal University of Pernambuco Medical School, Recife, PE, Brazil

15. Endocrine Division (SEMPR), Department of Internal Medicine, Universidade Federal do Parana, Curitiba, PR, Brazil

16. Endocrine Unit—Department of Internal Medicine, Faculty of Medical Sciences, Universidade do Estado do Rio de Janeiro, RJ, Brazil

17. Department of Internal Medicine, São Paulo State University/UNESP, Medical School, Botucatu, SP, Brazil

18. Division of Endocrinology of Medical Clinical Department, Universidade Estadual de Londrina (UEL), Londrina, PR, Brazil

19. Santa Casa de Porto Alegre, Porto Alegre, RS, Brazil

Abstract

Abstract Context Artificial intelligence (AI), in particular machine learning (ML), may be used to deeply analyze biomarkers of response to first-generation somatostatin receptor ligands (fg-SRLs) in the treatment of acromegaly. Objective To develop a prediction model of therapeutic response of acromegaly to fg-SRL. Methods Patients with acromegaly not cured by primary surgical treatment and who had adjuvant therapy with fg-SRL for at least 6 months after surgery were included. Patients were considered controlled if they presented growth hormone (GH) <1.0 ng/mL and normal age-adjusted insulin-like growth factor (IGF)-I levels. Six AI models were evaluated: logistic regression, k-nearest neighbor classifier, support vector machine, gradient-boosted classifier, random forest, and multilayer perceptron. The features included in the analysis were age at diagnosis, sex, GH, and IGF-I levels at diagnosis and at pretreatment, somatostatin receptor subtype 2 and 5 (SST2 and SST5) protein expression and cytokeratin granulation pattern (GP). Results A total of 153 patients were analyzed. Controlled patients were older (P = .002), had lower GH at diagnosis (P = .01), had lower pretreatment GH and IGF-I (P < .001), and more frequently harbored tumors that were densely granulated (P = .014) or highly expressed SST2 (P < .001). The model that performed best was the support vector machine with the features SST2, SST5, GP, sex, age, and pretreatment GH and IGF-I levels. It had an accuracy of 86.3%, positive predictive value of 83.3% and negative predictive value of 87.5%. Conclusion We developed a ML-based prediction model with high accuracy that has the potential to improve medical management of acromegaly, optimize biochemical control, decrease long-term morbidities and mortality, and reduce health services costs.

Funder

Fundação de Amparo a Pesquisa do Estado do Rio de Janeiro

Conselho Nacional de Desenvolvimento Científico e Tecnológico

Publisher

The Endocrine Society

Subject

Biochemistry (medical),Clinical Biochemistry,Endocrinology,Biochemistry,Endocrinology, Diabetes and Metabolism

Reference48 articles.

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