Kirelli Yasin, Arslankaya Seher, Koçer Havva Belma, Harmantepe Tarık
Management Information Systems, Kutahya Dumlupinar University, Kutahya, Turkey.
Industrial Engineering Department, Sakarya University, Sakarya, Turkey.
Heliyon. 2023 May 30;9(6):e16812. doi: 10.1016/j.heliyon.2023.e16812. eCollection 2023 Jun.
The objective of the study is to evaluate the performance of CNN-based proposed models for predicting patients' response to NAC treatment and the disease development process in the pathological area. The study aims to determine the main criteria that affect the model's success during training, such as the number of convolutional layers, dataset quality and depended variable.
The study uses pathological data frequently used in the healthcare industry to evaluate the proposed CNN-based models. The researchers analyze the classification performances of the models and evaluate their success during training.
The study shows that using deep learning methods, particularly CNN models, can offer strong feature representation and lead to accurate predictions of patients' response to NAC treatment and the disease development process in the pathological area. A model that predicts 'miller coefficient', 'tumor lymph node value', 'complete response in both tumor and axilla' values with high accuracy, which is considered to be effective in achieving complete response to treatment, has been created. Estimation performance metrics have been obtained as 87%, 77% and 91%, respectively.
The study concludes that interpreting pathological test results with deep learning methods is an effective way of determining the correct diagnosis and treatment method, as well as the prognosis follow-up of the patient. It provides clinicians with a solution to a large extent, particularly in the case of large, heterogeneous datasets that can be challenging to manage with traditional methods. The study suggests that using machine learning and deep learning methods can significantly improve the performance of interpreting and managing healthcare data.
本研究的目的是评估基于卷积神经网络(CNN)的模型在预测患者对新辅助化疗(NAC)治疗的反应以及病理区域疾病发展过程方面的性能。该研究旨在确定影响模型训练成功的主要标准,如卷积层数、数据集质量和因变量。
本研究使用医疗行业常用的病理数据来评估所提出的基于CNN的模型。研究人员分析模型的分类性能,并评估其在训练过程中的成功程度。
研究表明,使用深度学习方法,特别是CNN模型,可以提供强大的特征表示,并能准确预测患者对NAC治疗的反应以及病理区域的疾病发展过程。已经创建了一个能够高精度预测“米勒系数”“肿瘤淋巴结值”“肿瘤和腋窝均完全缓解”值的模型,该模型被认为在实现治疗完全缓解方面是有效的。估计性能指标分别为87%、77%和91%。
该研究得出结论,用深度学习方法解释病理检查结果是确定正确诊断和治疗方法以及患者预后随访的有效途径。它在很大程度上为临床医生提供了解决方案,特别是对于传统方法管理起来可能具有挑战性的大型异构数据集。该研究表明,使用机器学习和深度学习方法可以显著提高医疗数据解释和管理的性能。