Application of Machine Learning Algorithms for Risk Stratification and Efficacy Evaluation in Cervical Cancer Screening Among the ASCUS/LSIL Population: Evidence from the Korean HPV Cohort Study.

IF 4.1 2区 医学 Q2 ONCOLOGY Cancer Research and Treatment Pub Date : 2024-09-06 DOI:10.4143/crt.2024.465
Heekyoung Song, Hong Yeon Lee, Shin Ah Oh, Jaehyun Seong, Soo Young Hur, Youn Jin Choi
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Abstract

Purpose: We assessed human papillomavirus (HPV) genotype-based risk stratification and the efficacy of cytology testing for cervical cancer screening in patients with atypical squamous cells of undetermined significance (ASCUS)/low-grade squamous intraepithelial lesion (LSIL).

Materials and methods: Between 2010 and 2021, we monitored 1,237 HPV-positive women with ASCUS/LSIL every 6 months for up to 60 months. HPV infections were categorized as persistent (HPV positivity consistently observed post-enrollment), negative (HPV negativity consistently observed post-enrollment), or non-persistent (neither consistently positive nor negative). HPV genotypes were grouped into high-risk (Hr) groups 1 (types 16, 18, 31, 33, 45, 52, and 58) and 2 (types 35, 39, 51, 56, 59, 66, and 68) and a low-risk group. Hr1 was subdivided into types a) 16 and 18; b) 31, 33, and 45; and c) 52 and 58. Cox regression and machine learning (ML) algorithms were used to analyze progression rates.

Results: Among 1,273 participants, 17.6% with persistent HPV infections experienced disease progression versus no progression in the HPV-negative group (p<0.001). Cox analysis revealed the highest hazard ratios (HRs) for Hr1-a (11.6, p<0.001), followed by Hr1-b (9.26, p<0.001) and Hr1-c (7.21, p<0.001). HRs peaked at 12-24 months, with Hr1-a maintaining significance at 24-36 months (10.7, p=0.034). ML analysis identified the final cytology change pattern as the most significant factor, with 14-15 months the optimal time for detecting progression from the first examination.

Conclusion: In ASCUS/LSIL cases, follow-up strategies should be based on HPV risk types. Annual follow-up was the most effective monitoring for detecting progression/regression.

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应用机器学习算法对 ASCUS/LSIL 群体进行宫颈癌筛查的风险分层和疗效评估:来自韩国 HPV 队列研究的证据。
目的:我们评估了基于人乳头瘤病毒(HPV)基因型的风险分层以及细胞学检测对意义未定的非典型鳞状细胞(ASCUS)/低级别鳞状上皮内病变(LSIL)患者进行宫颈癌筛查的效果:2010 年至 2021 年间,我们对 1237 名 HPV 阳性的 ASCUS/LSIL 妇女进行了长达 60 个月的每 6 个月一次的监测。HPV感染分为持续感染(加入后持续观察到HPV阳性)、阴性感染(加入后持续观察到HPV阴性)或非持续感染(既非持续阳性也非阴性)。HPV 基因型分为高危 (Hr) 组 1(16、18、31、33、45、52 和 58 型)和组 2(35、39、51、56、59、66 和 68 型)以及低危组。Hr1 又分为 a) 16 和 18 型;b) 31、33 和 45 型;c) 52 和 58 型。采用 Cox 回归和机器学习(ML)算法分析进展率:结果:在1273名参与者中,17.6%的HPV持续感染者病情恶化,而HPV阴性感染者的病情没有恶化(p结论:在ASCUS/LSIL病例中,HPV持续感染者的病情恶化率高于HPV阴性感染者:对于ASCUS/LSIL病例,随访策略应基于HPV风险类型。年度随访是检测病情进展/恶化的最有效监测方法。
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来源期刊
CiteScore
8.00
自引率
2.20%
发文量
126
审稿时长
>12 weeks
期刊介绍: Cancer Research and Treatment is a peer-reviewed open access publication of the Korean Cancer Association. It is published quarterly, one volume per year. Abbreviated title is Cancer Res Treat. It accepts manuscripts relevant to experimental and clinical cancer research. Subjects include carcinogenesis, tumor biology, molecular oncology, cancer genetics, tumor immunology, epidemiology, predictive markers and cancer prevention, pathology, cancer diagnosis, screening and therapies including chemotherapy, surgery, radiation therapy, immunotherapy, gene therapy, multimodality treatment and palliative care.
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