Abstract
BackgroundCervical cancer screening programs are increasingly relying on sensitive molecular approaches as primary tests to detect high-risk human papillomaviruses (hrHPV), the causative agents of cervix cancer. Although hrHPV infection is a pre-requisite for the development of most precancerous lesions, the mere detection of viral nucleic acids, also present in transient infections, is not specific of the underlying cellular state, resulting in poor positive predictive values (PPV) regarding lesional states. There is a need to increase the specificity of molecular tests for better stratifying individuals at risk of cancer and to adapt follow-up strategies.MethodsHPV-RNA-SEQ, a targeted RNA next generation sequencing assay allowing the detection of up to 16 hrHPV splice events and key human transcripts, has previously shown encouraging PPV for the detection of precancerous lesions. Herein, on 302 patients with normal cytology (NILM, n = 118), low-grade (LSIL, n = 104) or high-grade squamous intraepithelial lesions (HSIL, n = 80), machine learning-based model improvement was applied to reach 2-classes (NILM vs HSIL) or 3-classes (NILM, LSIL, HSIL) predictive models.ResultsLinear (elastic net) and nonlinear (random forest) approaches resulted in five 2-class models that detect HSIL vs NILM in a validation set with specificity up to 0.87, well within the range of PPV of other competing RNA-based tests in a screening population.ConclusionsHPV-RNA-SEQ improves the detection of HSIL lesions and has the potential to complete and eventually replace current molecular approaches as a first-line test. Further performance evaluation remains to be done on larger and prospective cohorts.
Highlights
Cervical cancer screening programs are increasingly relying on sensitive molecular approaches as pri‐ mary tests to detect high-risk human papillomaviruses, the causative agents of cervix cancer
Linear and nonlinear approaches resulted in five 2-class models that detect HSIL vs NILM in a validation set with specificity up to 0.87, well within the range of positive predictive values (PPV) of other competing RNA-based tests in a screening population
Human Papillomavirus (HPV)-RNA-SEQ improves the detection of HSIL lesions and has the potential to complete and eventually replace current molecular approaches as a first-line test
Summary
Cervical cancer screening programs are increasingly relying on sensitive molecular approaches as pri‐ mary tests to detect high-risk human papillomaviruses (hrHPV), the causative agents of cervix cancer. Most cervical cancer cases are caused by sexually transmitted high-risk Human papillomaviruses (hrHPV). The 8 kb-sized genome of hrHPV encodes five early proteins (E2, E4, E5, E6, E7) and 2 capsid proteins referred as late genes (L1, L2) (Schiffman et al 2016; McBride 2022). The expression of the early genes E1, E2, E4, E5, E6 and E7 ensures viral genome replication and maintenance at relatively low levels (McBride 2022). The capsid proteins L1 and L2 are expressed in the mid and upper layers of the epithelium, assuring virions assembly and release of mature infectious virions (Schiffman et al 2016; Woodman et al 2007)
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