P. Ramachandran, A. Ramesh, F. Creswell, A. Wapniarski, C. Quinn, M. Rutakingirwa, Ananta Bandigwala, E. Kagimu, KT Kandole, K. Zorn, L. Tugume, J. Kasibante, K. Ssebambulidde, Micheal Okirwoth, N. Bahr, A. Musubire, A. Lyden, P. Serpa, G. Castañeda, S. Caldera, C. Langelier, E. Crawford, D. Boulware, D. Meya, M. Wilson
{"title":"038利用宏基因组学和宿主转录组学解决乌干达传染性脑膜炎","authors":"P. Ramachandran, A. Ramesh, F. Creswell, A. Wapniarski, C. Quinn, M. Rutakingirwa, Ananta Bandigwala, E. Kagimu, KT Kandole, K. Zorn, L. Tugume, J. Kasibante, K. Ssebambulidde, Micheal Okirwoth, N. Bahr, A. Musubire, A. Lyden, P. Serpa, G. Castañeda, S. Caldera, C. Langelier, E. Crawford, D. Boulware, D. Meya, M. Wilson","doi":"10.1136/bmjno-2021-anzan.38","DOIUrl":null,"url":null,"abstract":"Objectives Tuberculous meningitis(TBM) is a common cause of meningitis in sub-Saharan Africa. CSF PCR with GeneXpert RIF/MTB Ultra is only 70% sensitive for detection of definite/probable TBM. Many infections can mimic TBM. Metagenomic next generation sequencing(mNGS) can detect the whole diversity of infectious microbes, but can be insensitive to TB in CSF. We assessed whether leveraging CSF mNGS to identify infections combined with a machine learning classifier(MLC), based on host transcriptomic data generated by mNGS, could enhance diagnostic accuracy for TBM. Methods Prospectively enrolled 347 HIV-infected Ugandan adults with subacute meningitis: RNA/DNA libraries were made from CSF and deep sequenced. Non-human sequences were interrogated to identify pathogens. A host transcriptomic MLC was developed from human RNA transcripts using 70 cases. The MLC and mNGS reporting thresholds were then tested on 108 blinded cases within the cohort. Results mNGS was 75% concordant(27/36) for detecting TB in definite TBM cases and 59% concordant(30/51) in definite/probable TBM combined. 3 TB and 3 non-TB pathogens were detected in the probable TBM group. In the possible TBM/indeterminant groups, mNGS identified 3 cases of TBM and 17 other pathogens. The combined mNGS and host-MLC displayed 83.3%(5/6) sensitivity, 86.8%(59/68) specificity, with an area under the ROC curve of 0.83(p=0.009). Conclusion mNGS identified an array of infectious TBM mimics, including many treatable and vaccine preventable pathogens. mNGS was 75% concordant with definite TBM. We further enhanced the sensitivity of the CSF mNGS assay by developing the first CSF-based host MLC to discriminate between TBM and its mimics","PeriodicalId":19692,"journal":{"name":"Oral abstracts","volume":"45 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2021-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"038 Resolving infectious meningitis in uganda with metagenomics and host transcriptomics\",\"authors\":\"P. Ramachandran, A. Ramesh, F. Creswell, A. Wapniarski, C. Quinn, M. Rutakingirwa, Ananta Bandigwala, E. Kagimu, KT Kandole, K. Zorn, L. Tugume, J. Kasibante, K. Ssebambulidde, Micheal Okirwoth, N. Bahr, A. Musubire, A. Lyden, P. Serpa, G. Castañeda, S. Caldera, C. Langelier, E. Crawford, D. Boulware, D. Meya, M. Wilson\",\"doi\":\"10.1136/bmjno-2021-anzan.38\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Objectives Tuberculous meningitis(TBM) is a common cause of meningitis in sub-Saharan Africa. CSF PCR with GeneXpert RIF/MTB Ultra is only 70% sensitive for detection of definite/probable TBM. Many infections can mimic TBM. Metagenomic next generation sequencing(mNGS) can detect the whole diversity of infectious microbes, but can be insensitive to TB in CSF. We assessed whether leveraging CSF mNGS to identify infections combined with a machine learning classifier(MLC), based on host transcriptomic data generated by mNGS, could enhance diagnostic accuracy for TBM. Methods Prospectively enrolled 347 HIV-infected Ugandan adults with subacute meningitis: RNA/DNA libraries were made from CSF and deep sequenced. Non-human sequences were interrogated to identify pathogens. A host transcriptomic MLC was developed from human RNA transcripts using 70 cases. The MLC and mNGS reporting thresholds were then tested on 108 blinded cases within the cohort. Results mNGS was 75% concordant(27/36) for detecting TB in definite TBM cases and 59% concordant(30/51) in definite/probable TBM combined. 3 TB and 3 non-TB pathogens were detected in the probable TBM group. In the possible TBM/indeterminant groups, mNGS identified 3 cases of TBM and 17 other pathogens. The combined mNGS and host-MLC displayed 83.3%(5/6) sensitivity, 86.8%(59/68) specificity, with an area under the ROC curve of 0.83(p=0.009). Conclusion mNGS identified an array of infectious TBM mimics, including many treatable and vaccine preventable pathogens. mNGS was 75% concordant with definite TBM. We further enhanced the sensitivity of the CSF mNGS assay by developing the first CSF-based host MLC to discriminate between TBM and its mimics\",\"PeriodicalId\":19692,\"journal\":{\"name\":\"Oral abstracts\",\"volume\":\"45 1\",\"pages\":\"\"},\"PeriodicalIF\":0.0000,\"publicationDate\":\"2021-08-01\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Oral abstracts\",\"FirstCategoryId\":\"1085\",\"ListUrlMain\":\"https://doi.org/10.1136/bmjno-2021-anzan.38\",\"RegionNum\":0,\"RegionCategory\":null,\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"\",\"JCRName\":\"\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Oral abstracts","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1136/bmjno-2021-anzan.38","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
摘要
目的结核性脑膜炎(TBM)是撒哈拉以南非洲地区脑膜炎的常见病因。使用GeneXpert RIF/MTB Ultra的CSF PCR检测确定/可能的结核性脑膜炎的灵敏度仅为70%。许多感染可以模仿结核性脑膜炎。metagenomics next generation sequencing(mNGS)可以检测感染性微生物的全部多样性,但对脑脊液中的结核不敏感。我们评估了是否利用CSF mNGS来识别感染,结合机器学习分类器(MLC),基于mNGS生成的宿主转录组数据,可以提高TBM的诊断准确性。方法前瞻性纳入347例艾滋病病毒感染的乌干达成人亚急性脑膜炎患者:从脑脊液中建立RNA/DNA文库并进行深度测序。非人类序列被用来鉴定病原体。利用70例人类RNA转录物构建宿主转录组MLC。然后在队列中的108例盲法病例中测试MLC和mNGS报告阈值。结果mNGS对确诊结核结核的检出率为75%(27/36),对确诊/疑似结核结核合并检出率为59%(30/51)。疑似结核分枝杆菌组检出结核分枝杆菌3例,非结核分枝杆菌3例。在可能的TBM/不确定组中,mNGS鉴定出3例TBM和17例其他病原体。mNGS联合宿主- mlc的敏感性为83.3%(5/6),特异性为86.8%(59/68),ROC曲线下面积为0.83(p=0.009)。结论mNGS鉴定出一系列传染性TBM模拟物,包括许多可治疗和疫苗可预防的病原体。mNGS与确定TBM的一致性为75%。通过开发首个基于CSF的宿主MLC来区分TBM及其模拟物,我们进一步提高了CSF mNGS检测的灵敏度
038 Resolving infectious meningitis in uganda with metagenomics and host transcriptomics
Objectives Tuberculous meningitis(TBM) is a common cause of meningitis in sub-Saharan Africa. CSF PCR with GeneXpert RIF/MTB Ultra is only 70% sensitive for detection of definite/probable TBM. Many infections can mimic TBM. Metagenomic next generation sequencing(mNGS) can detect the whole diversity of infectious microbes, but can be insensitive to TB in CSF. We assessed whether leveraging CSF mNGS to identify infections combined with a machine learning classifier(MLC), based on host transcriptomic data generated by mNGS, could enhance diagnostic accuracy for TBM. Methods Prospectively enrolled 347 HIV-infected Ugandan adults with subacute meningitis: RNA/DNA libraries were made from CSF and deep sequenced. Non-human sequences were interrogated to identify pathogens. A host transcriptomic MLC was developed from human RNA transcripts using 70 cases. The MLC and mNGS reporting thresholds were then tested on 108 blinded cases within the cohort. Results mNGS was 75% concordant(27/36) for detecting TB in definite TBM cases and 59% concordant(30/51) in definite/probable TBM combined. 3 TB and 3 non-TB pathogens were detected in the probable TBM group. In the possible TBM/indeterminant groups, mNGS identified 3 cases of TBM and 17 other pathogens. The combined mNGS and host-MLC displayed 83.3%(5/6) sensitivity, 86.8%(59/68) specificity, with an area under the ROC curve of 0.83(p=0.009). Conclusion mNGS identified an array of infectious TBM mimics, including many treatable and vaccine preventable pathogens. mNGS was 75% concordant with definite TBM. We further enhanced the sensitivity of the CSF mNGS assay by developing the first CSF-based host MLC to discriminate between TBM and its mimics