Frontiers in Oncology (Mar 2022)

An Assisted Diagnosis Model for Cancer Patients Based on Federated Learning

  • Zezhong Ma,
  • Zezhong Ma,
  • Zezhong Ma,
  • Zezhong Ma,
  • Meng Zhang,
  • Meng Zhang,
  • Jiajia Liu,
  • Aimin Yang,
  • Aimin Yang,
  • Aimin Yang,
  • Aimin Yang,
  • Aimin Yang,
  • Hao Li,
  • Hao Li,
  • Jian Wang,
  • Jian Wang,
  • Dianbo Hua,
  • Mingduo Li,
  • Mingduo Li

DOI
https://doi.org/10.3389/fonc.2022.860532
Journal volume & issue
Vol. 12

Abstract

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Since the 20th century, cancer has been a growing threat to human health. Cancer is a malignant tumor with high clinical morbidity and mortality, and there is a high risk of recurrence after surgery. At the same time, the diagnosis of whether the cancer is in situ recurrence is crucial for further treatment of cancer patients. According to statistics, about 90% of cancer-related deaths are due to metastasis of primary tumor cells. Therefore, the study of the location of cancer recurrence and its influencing factors is of great significance for the clinical diagnosis and treatment of cancer. In this paper, we propose an assisted diagnosis model for cancer patients based on federated learning. In terms of data, the influencing factors of cancer recurrence and the special needs of data samples required by federated learning were comprehensively considered. Six first-level impact indicators were determined, and the historical case data of cancer patients were further collected. Based on the federated learning framework combined with convolutional neural network, various physical examination indicators of patients were taken as input. The recurrence time and recurrence location of patients were used as output to construct an auxiliary diagnostic model, and linear regression, support vector regression, Bayesling regression, gradient ascending tree and multilayer perceptrons neural network algorithm were used as comparison algorithms. CNN’s federated prediction model based on improved under the condition of the joint modeling and simulation on the five types of cancer data accuracy reached more than 90%, the accuracy is better than single modeling machine learning tree model and linear model and neural network, the results show that auxiliary diagnosis model based on the study of cancer patients in assisted the doctor in the diagnosis of patients, As well as effectively provide nutritional programs for patients and have application value in prolonging the life of patients, it has certain guiding significance in the field of medical cancer rehabilitation.

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