Cargando…
Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses
BACKGROUND: There is a high incidence of leprosy among house-contacts compared with the general population. We aimed to establish a predictive model using these genetic factors along with epidemiological factors to predict leprosy risk of leprosy household contacts (HHCs). METHODS: Weighted genetic...
Autores principales: | , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8176313/ https://www.ncbi.nlm.nih.gov/pubmed/34051440 http://dx.doi.org/10.1016/j.ebiom.2021.103408 |
_version_ | 1783703235978067968 |
---|---|
author | Long, Si-Yu Sun, Ji-Ya Wang, Le Long, Heng Jiang, Hai-Qin Shi, Ying Zhang, Wen-Yue Xiong, Jing-Shu Sun, Pei-Wen Chen, Yan-Qing Mei, You-Ming Pan, Chun Wang, Zhen-Zhen Wu, Zi-Wei Wu, Ai-Ping Yu, Mei-Wen Wang, Hong-Sheng |
author_facet | Long, Si-Yu Sun, Ji-Ya Wang, Le Long, Heng Jiang, Hai-Qin Shi, Ying Zhang, Wen-Yue Xiong, Jing-Shu Sun, Pei-Wen Chen, Yan-Qing Mei, You-Ming Pan, Chun Wang, Zhen-Zhen Wu, Zi-Wei Wu, Ai-Ping Yu, Mei-Wen Wang, Hong-Sheng |
author_sort | Long, Si-Yu |
collection | PubMed |
description | BACKGROUND: There is a high incidence of leprosy among house-contacts compared with the general population. We aimed to establish a predictive model using these genetic factors along with epidemiological factors to predict leprosy risk of leprosy household contacts (HHCs). METHODS: Weighted genetic risk score (wGRS) encompassing genome wide association studies (GWAS) variants and five non-genetic factors were examined in a case–control design associated with leprosy risk including 589 cases and 647 controls from leprosy HHCs. We constructed a risk prediction nomogram and evaluated its performance by concordance index (C-index) and calibration curve. The results were validated using bootstrap resampling with 1000 resamples and a prospective design including 1100 HHCs of leprosy patients. FINDING: The C-index for the risk model was 0·792 (95% confidence interval [CI] 0·768-0·817), and was confirmed to be 0·780 through bootstrapping validation. The calibration curve for the probability of leprosy showed good agreement between the prediction of the nomogram and actual observation. HHCs were then divided into the low-risk group (nomogram score ≤ 81) and the high-risk group (nomogram score > 81). In prospective analysis, 12 of 1100 participants had leprosy during 63 months’ follow-up. We generated the nomogram for leprosy in the validation cohort (C-index 0·773 [95%CI 0·658-0·888], sensitivity75·0%, specificity 66·8%). Interpretation The nomogram achieved an effective prediction of leprosy in HHCs. Using the model, the risk of an individual contact developing leprosy can be determined, which can lead to a rational preventive choice for tracing higher-risk leprosy contacts. FUNDING: The ministry of health of China, ministry of science and technology of China, Chinese academy of medical sciences, Jiangsu provincial department of science and technology, Nanjing municipal science and technology bureau. |
format | Online Article Text |
id | pubmed-8176313 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-81763132021-06-15 Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses Long, Si-Yu Sun, Ji-Ya Wang, Le Long, Heng Jiang, Hai-Qin Shi, Ying Zhang, Wen-Yue Xiong, Jing-Shu Sun, Pei-Wen Chen, Yan-Qing Mei, You-Ming Pan, Chun Wang, Zhen-Zhen Wu, Zi-Wei Wu, Ai-Ping Yu, Mei-Wen Wang, Hong-Sheng EBioMedicine Research Paper BACKGROUND: There is a high incidence of leprosy among house-contacts compared with the general population. We aimed to establish a predictive model using these genetic factors along with epidemiological factors to predict leprosy risk of leprosy household contacts (HHCs). METHODS: Weighted genetic risk score (wGRS) encompassing genome wide association studies (GWAS) variants and five non-genetic factors were examined in a case–control design associated with leprosy risk including 589 cases and 647 controls from leprosy HHCs. We constructed a risk prediction nomogram and evaluated its performance by concordance index (C-index) and calibration curve. The results were validated using bootstrap resampling with 1000 resamples and a prospective design including 1100 HHCs of leprosy patients. FINDING: The C-index for the risk model was 0·792 (95% confidence interval [CI] 0·768-0·817), and was confirmed to be 0·780 through bootstrapping validation. The calibration curve for the probability of leprosy showed good agreement between the prediction of the nomogram and actual observation. HHCs were then divided into the low-risk group (nomogram score ≤ 81) and the high-risk group (nomogram score > 81). In prospective analysis, 12 of 1100 participants had leprosy during 63 months’ follow-up. We generated the nomogram for leprosy in the validation cohort (C-index 0·773 [95%CI 0·658-0·888], sensitivity75·0%, specificity 66·8%). Interpretation The nomogram achieved an effective prediction of leprosy in HHCs. Using the model, the risk of an individual contact developing leprosy can be determined, which can lead to a rational preventive choice for tracing higher-risk leprosy contacts. FUNDING: The ministry of health of China, ministry of science and technology of China, Chinese academy of medical sciences, Jiangsu provincial department of science and technology, Nanjing municipal science and technology bureau. Elsevier 2021-05-26 /pmc/articles/PMC8176313/ /pubmed/34051440 http://dx.doi.org/10.1016/j.ebiom.2021.103408 Text en © 2021 Published by Elsevier B.V. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Research Paper Long, Si-Yu Sun, Ji-Ya Wang, Le Long, Heng Jiang, Hai-Qin Shi, Ying Zhang, Wen-Yue Xiong, Jing-Shu Sun, Pei-Wen Chen, Yan-Qing Mei, You-Ming Pan, Chun Wang, Zhen-Zhen Wu, Zi-Wei Wu, Ai-Ping Yu, Mei-Wen Wang, Hong-Sheng Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title | Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title_full | Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title_fullStr | Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title_full_unstemmed | Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title_short | Predictive nomogram for leprosy using genetic and epidemiological risk factors in Southwestern China: Case–control and prospective analyses |
title_sort | predictive nomogram for leprosy using genetic and epidemiological risk factors in southwestern china: case–control and prospective analyses |
topic | Research Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8176313/ https://www.ncbi.nlm.nih.gov/pubmed/34051440 http://dx.doi.org/10.1016/j.ebiom.2021.103408 |
work_keys_str_mv | AT longsiyu predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT sunjiya predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT wangle predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT longheng predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT jianghaiqin predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT shiying predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT zhangwenyue predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT xiongjingshu predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT sunpeiwen predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT chenyanqing predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT meiyouming predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT panchun predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT wangzhenzhen predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT wuziwei predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT wuaiping predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT yumeiwen predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses AT wanghongsheng predictivenomogramforleprosyusinggeneticandepidemiologicalriskfactorsinsouthwesternchinacasecontrolandprospectiveanalyses |