Abstract

We aimed to assess the use of automatic machine learning (AutoML) algorithm based on magnetic resonance (MR) image data to assign prediction scores to patients with nasopharyngeal carcinoma (NPC). We also aimed to develop a 4-group classification system for NPC, superior to the current clinical staging system. Between January 2010 and January 2013, 792 patients with recent diagnosis of NPC, who had MR image data, were enrolled in the study. The AutoML algorithm was used and all statistical analyses were based on the 10-fold test. Primary endpoints included the probabilities of overall survival (OS), distant metastasis-free survival (DMFS), and local-region relapse-free survival (LRFS), and their sum was recorded as the final voting score, representative of progression-free survival (PFS) for each patient. The area under the receiver operating characteristic (ROC) curve generated from the MR image data-based model compared with the tumor, node, and metastasis (TNM) system-based model was 0.796 (P=0.008) for OS, 0.752 (P=0.053) for DMFS, and 0.721 (P=0.025) for LRFS. The Kaplan-Meier (KM) test values for II/I, III/II, IV/III groups in our new machine learning-based scoring system were 0.011, 0.010, and <0.001, respectively, whereas those for II/I, III/II, IV/III groups in the TNM/American Joint Committee on Cancer (AJCC) system were 0.118, 0.121, and <0.001, respectively. Significant differences were observed in the new machine learning-based scoring system analysis of each curve (P < 0.05), whereas the P values of curves obtained from the TNM/AJCC system, between II/I and III/II, were 0.118 and 0.121, respectively, without a significant difference. In conclusion, the AutoML algorithm demonstrated better prognostic performance than the TNM/AJCC system for NPC. The algorithm showed a good potential for clinical application and may aid in improving counseling and facilitate the personalized management of patients with NPC. The clinical application of our new scoring and staging system may significantly improve precision medicine.

Highlights

  • Nasopharyngeal carcinoma (NPC), which is a malignant cancer arising in the epithelium of the nasopharynx, is a prevalent form of cancer in a number of populations, including those in South China, Southeast Asia, the Arctic, the Middle East, and North Africa [1,2,3]

  • Intensity-modulated radiotherapy (IMRT) has been extensively used by virtue of its lower normal tissue doses and more uniform target doses when compared to conformal radiotherapy [5,6,7,8]. is has led to improved disease outcomes due to a higher local tumor control rate

  • Of the remaining 841 patients, 24 with distant metastasis and 5 without neck magnetic resonance imaging (MRI) and 20 cases combined with other tumors were excluded

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Summary

Introduction

Nasopharyngeal carcinoma (NPC), which is a malignant cancer arising in the epithelium of the nasopharynx, is a prevalent form of cancer in a number of populations, including those in South China, Southeast Asia, the Arctic, the Middle East, and North Africa [1,2,3]. Radiotherapy is the primary treatment for NPC. Is has led to improved disease outcomes due to a higher local tumor control rate. Distant metastasis is the predominant reason for treatment failure in patients with NPC [9]. Advances in diagnostic and therapeutic techniques have improved the BioMed Research International management and treatment of NPC [10,11,12]. Due to its high spatial resolution for examination of soft tissues, magnetic resonance imaging (MRI) has been extensively used as the optimal imaging modality for the assessment of local, regional, and intracranial infiltration of NPC in clinical practice [13]. Due to its high spatial resolution for examination of soft tissues, magnetic resonance imaging (MRI) has been extensively used as the optimal imaging modality for the assessment of local, regional, and intracranial infiltration of NPC in clinical practice [13]. e usefulness of MRI for stage assignment and disease prognosis has been reported [12]

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