A Machine Learning Decision Support System (DSS) for Neuroendocrine Tumor Patients Treated with Somatostatin Analog (SSA) Therapy
Jasminka Hasic Telalovic,
Serena Pillozzi,
Rachele Fabbri,
Alice Laffi,
Daniele Lavacchi,
Virginia Rossi,
Lorenzo Dreoni,
Francesca Spada,
Nicola Fazio,
Amedeo Amedei,
Ernesto Iadanza,
Lorenzo Antonuzzo
Affiliations
Jasminka Hasic Telalovic
Computer Science Department, University Sarajevo School of Science and Technology, 71210 Sarajevo, Bosnia and Herzegovina
Serena Pillozzi
Medical Oncology Unit, Careggi University Hospital, Largo Brambilla 4, 50134 Florence, Italy
Rachele Fabbri
Department of Information Engineering, University of Florence, Via S. Marta 3, 50139 Florence, Italy
Alice Laffi
Division of Gastrointestinal Medical Oncology and Neuroendocrine Tumors, European Institute of Oncology, IEO, IRCCS, Via Ripamonti 435, 20141 Milan, Italy
Daniele Lavacchi
Medical Oncology Unit, Careggi University Hospital, Largo Brambilla 4, 50134 Florence, Italy
Virginia Rossi
Medical Oncology Unit, Careggi University Hospital, Largo Brambilla 4, 50134 Florence, Italy
Lorenzo Dreoni
Medical Oncology Unit, Careggi University Hospital, Largo Brambilla 4, 50134 Florence, Italy
Francesca Spada
Division of Gastrointestinal Medical Oncology and Neuroendocrine Tumors, European Institute of Oncology, IEO, IRCCS, Via Ripamonti 435, 20141 Milan, Italy
Nicola Fazio
Division of Gastrointestinal Medical Oncology and Neuroendocrine Tumors, European Institute of Oncology, IEO, IRCCS, Via Ripamonti 435, 20141 Milan, Italy
Amedeo Amedei
Department of Experimental and Clinical Medicine, University of Florence, Largo Brambilla 3, 50134 Florence, Italy
Ernesto Iadanza
Department of Information Engineering, University of Florence, Via S. Marta 3, 50139 Florence, Italy
Lorenzo Antonuzzo
Medical Oncology Unit, Careggi University Hospital, Largo Brambilla 4, 50134 Florence, Italy
The application of machine learning (ML) techniques could facilitate the identification of predictive biomarkers of somatostatin analog (SSA) efficacy in patients with neuroendocrine tumors (NETs). We collected data from 74 patients with a pancreatic or gastrointestinal NET who received SSA as first-line therapy. We developed three classification models to predict whether the patient would experience a progressive disease (PD) after 12 or 18 months based on clinic-pathological factors at the baseline. The dataset included 70 samples and 15 features. We initially developed three classification models with accuracy ranging from 55% to 70%. We then compared ten different ML algorithms. In all but one case, the performance of the Multinomial Naïve Bayes algorithm (80%) was the highest. The support vector machine classifier (SVC) had a higher performance for the recall metric of the progression-free outcome (97% vs. 94%). Overall, for the first time, we documented that the factors that mainly influenced progression-free survival (PFS) included age, the number of metastatic sites and the primary site. In addition, the following factors were also isolated as important: adverse events G3–G4, sex, Ki67, metastatic site (liver), functioning NET, the primary site and the stage. In patients with advanced NETs, ML provides a predictive model that could potentially be used to differentiate prognostic groups and to identify patients for whom SSA therapy as a single agent may not be sufficient to achieve a long-lasting PFS.