Abstract

Simple SummaryCancer is the leading cause of death in Taiwan. Compared with other types of cancer, the incidence of lung cancer is high. In this study, the National Health In-surance Research Database (NHIRDB) was used to determine the diseases and symptoms associ-ated with lung cancer, and a 10-year probability deep neural network prediction model for lung cancer was developed. The proposed model could allow patients with a high risk of lung cancer to receive an earlier diagnosis and support the physicians’ clinical decision-making. As a result, a total of 13 diseases were selected as the predicting factors. The proposed model showed an accuracy of 85.4%, a sensitivity of 72.4% and a specificity of 85%, as well as an 87.4% area under ROC (95%, 0.8604–0.8885) model precision. Based on data analysis and deep learning, our prediction model discovered some features that had not been previously identified by clinical knowledge. This study tracks a decade of clinical diagnostic records to identify possible symptoms and comorbidities of lung cancer, allows early prediction of the disease, and assists more patients with early diagnosis.Cancer is the leading cause of death in Taiwan. According to the Cancer Registration Report of Taiwan’s Ministry of Health and Welfare, a total of 13,488 people suffered from lung cancer in 2016, making it the second-most common cancer and the leading cancer in men. Compared with other types of cancer, the incidence of lung cancer is high. In this study, the National Health Insurance Research Database (NHIRDB) was used to determine the diseases and symptoms associated with lung cancer, and a 10-year probability deep neural network prediction model for lung cancer was developed. The proposed model could allow patients with a high risk of lung cancer to receive an earlier diagnosis and support the physicians’ clinical decision-making. The study was designed as a cohort study. The subjects were patients who were diagnosed with lung cancer between 2000 and 2009, and the patients’ disease histories were back-tracked for a period, extending to ten years before the diagnosis of lung cancer. As a result, a total of 13 diseases were selected as the predicting factors. A nine layers deep neural network model was created to predict the probability of lung cancer, depending on the different pre-diagnosed diseases, and to benefit the earlier detection of lung cancer in potential patients. The model is trained 1000 times, the batch size is set to 100, the SGD (Stochastic gradient descent) optimizer is used, the learning rate is set to 0.1, and the momentum is set to 0.1. The proposed model showed an accuracy of 85.4%, a sensitivity of 72.4% and a specificity of 85%, as well as an 87.4% area under ROC (AUROC) (95%, 0.8604–0.8885) model precision. Based on data analysis and deep learning, our prediction model discovered some features that had not been previously identified by clinical knowledge. This study tracks a decade of clinical diagnostic records to identify possible symptoms and comorbidities of lung cancer, allows early prediction of the disease, and assists more patients with early diagnosis.

Highlights

  • Cancer is the leading cause of death in Taiwan

  • This study developed a 10-year lung cancer risk prediction model based on the Taiwan

  • Patients who developed lung cancer between 1 January 2000 and 31 December 2009 were eligible for inclusion in this study, and all outpatient records before diagnosis were tracked in order to identify the potential impacts or comorbidities of the disease, and to assist patients with early screening

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Summary

Introduction

Cancer is the leading cause of death in Taiwan. According to the Cancer RegistrationReport of Taiwan’s Ministry of Health and Welfare, a total of 13,488 people suffered from lung cancer in 2016, making it the second-most common cancer and the most common cancer in men.Cancer is usually curable by surgery and adjunctive therapy when it is diagnosed in the early stages [1]. Cancer is the leading cause of death in Taiwan. Cancer is usually curable by surgery and adjunctive therapy when it is diagnosed in the early stages [1]. An early diagnosis is important in the elderly, even if the patient has other diseases. Surgery can improve a patient’s quality of life, even if the goal is not to extend the life of the patient [2]. The radiation and medical treatment provided after surgery can reduce the risk of the cancer spreading, but these adjuvant treatments can cause temporary harm. For patients over 65 years of age, chemotherapy should be avoided, and if radiation therapy is adopted smaller dosages than usual should be used [3]

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