key: cord-0826009-xy83mogv authors: Kawang, Kornthara; Naoudom, Udsanee; Kowitdamrong, Ekasit; Kerr, Stephen J.; Ruxrungtham, Kiat; Nilaratanakul, Voraphoj title: Sensitivity and specificity of anti-double-stranded RNA immunofluorescence for universal detection of viral infection in respiratory specimens date: 2021-11-25 journal: Heliyon DOI: 10.1016/j.heliyon.2021.e08471 sha: 1b675c8388fcdc4ee0ffe802fe937479d9115ff2 doc_id: 826009 cord_uid: xy83mogv BACKGROUND: Emerging viruses could be detected before reaching pandemic level if universal viral detection screening was routinely used. Double-stranded RNA (dsRNA) is the only common antigen across most viral families. Anti-dsRNA immunofluorescence has shown promising results in vitro; however, its diagnostic value in respiratory specimens has not been evaluated. METHODS: Consecutive inpatient cases of suspected respiratory viral infections were prospectively enrolled. Respiratory samples were collected and divided for anti-dsRNA immunofluorescence (index test) and 19-subtypes respiratory virus microarray (reference standard). Using fluorescence microscopy, positive or negative anti-dsRNA IF results were determined independently by two raters. RESULTS: By microarray, 108 and 87 samples were positive and negative for viruses, respectively. The anti-dsRNA IF sensitivity was 83.3% (95%CI 76.1%–90.2%), while specificity was 87.4% (95%CI 80.8%–93.7%). CONCLUSIONS: Anti-dsRNA IF is simple to perform, with acceptable accuracy, and suitable for point-of-care respiratory virus screening. Unlike most molecular techniques, known viral genome sequences are not required. Many respiratory viruses, especially influenza and coronavirus, have continuously evolved in wildlife and successively attacked humans and livestock on a global scale [1] . To prevent future pandemics, the Global Virome Project was established, focusing on early identification of the pandemic-potential of viruses found in wild animals [2] . Despite the tremendous manpower and resources required by this project, this effort alone was unable to prevent the current pandemic of SARS-CoV-2. Viral adaptation to a human host is a rate-determining step before these zoonotic viruses efficiently spread from human to human and reach pandemic stage [3, 4] . It may be possible to effectively detect emerging viruses at early stages of adaptation, if most patients suspected of viral infections are routinely screened. Many molecular techniques have already been developed for this purpose. The majority are polymerase chain reaction (PCR)-based and, more specifically, multiplex PCR assays, that make the diagnosis of viral infections in the respiratory system faster and broader [5] . One such method is the microarray technique, where amplified viral genetic material (amplicons) from multiplex PCR are hybridized to the microarray to identify the type of virus [6] . Unfortunately, due to their complexity, relatively high price and long turn-around time, microarray technology and other multiplexing methods for virus panels are only available at some tertiary and university hospitals. In addition, this technique is not applicable if the viral genome is unknown, as is the case with a newly emerging virus. There is therefore an urgent need for a rapid, affordable, and broad diagnostic test for unknown respiratory viruses, that can be deployed in most settings. This would facilitate increased understanding of virus epidemiology and provide an opportunity for early detection of newly emerging and unknown viruses. From a public health perspective, earlier diagnosis of respiratory viral infections would afford the opportunity for early initiation of specific anti-viral treatments, and prompt isolation of the patients. Double-stranded RNA (dsRNA) is generated as a by-product of viral replication in cells infected by most viruses, with a few exceptions including retroviruses and hepatitis B virus [7] . Since long dsRNA are pathogen-associated molecular patterns (PAMPs) not generally found in normal human cells [8] , anti-dsRNA immunofluorescence (IF) may be able to detect virus-infected cells. Originally known as a 'pan-enterovirus antibody', anti-dsRNA antibodies detect cells infected by most viruses due to their characteristic binding to any long dsRNA, independent of their sequence [9] . Unlike single-stranded RNA, dsRNA is not easily degraded and can survive better in poor storage conditions [10] . In previous studies, direct and indirect IF assays against viral proteins have been used for detection of respiratory viral infections. Reported sensitivity and specificity range from 65-86% and 99-100%, respectively [11, 12] . Though anti-dsRNA antibody has been widely used in vitro for many viruses [7, 13, 14] , it has rarely been applied to clinical specimens. One report observed positive anti-dsRNA immunoassay results in formalin-fixed paraffin-embedded (FFPE) cardiac tissues autopsied from children with enteroviral myocarditis [15] . Tissue diagnosis, however, is not a practical choice for most viral infections. This study aimed to explore the feasibility and accuracy of anti-dsRNA IF, as a triage test for viral infections in direct respiratory samples from inpatient settings, compared to the commercially available microarray technique. All patients whose respiratory specimens were tested for respiratory virus microarray by request from their primary physician were prospectively and consecutively enrolled. Specimens were taken from both upper and lower respiratory tracts including nasal swab, nasopharyngeal swab, throat swab, sputum, tracheal suction, and bronchoalveolar lavage. After delivery of specimens to the laboratory for routine detection of 19 subtypes of respiratory viruses with microarray, an amount of 0.5 ml from the 2 ml total from each specimen in viral transport medium (2% fetal bovine serum, 10 units/ml penicillin, and 10 mcg/ml streptomycin in phosphate buffered saline) was secured and stored at 4 C for further anti-dsRNA immunofluorescence. The specimens were labeled with random numbers and the microarray results were concealed from the investigators. Each specimen was prepared on a microscope glass slide in a biosafety cabinet class II type A2. One hundred microliters of each specimen was cytocentrifuged (Hettich Rotina 380R with cytospin adaptor and 1 ml cyto chambers) at 4,000 rpm for 5 min onto a 30 mm 2 surface area of each slide, air-dried, then fixed with cold acetone (À20 C) for 10 min. The fixed slides were air-dried again at room temperature and stored at -20 C. We had previously compared between heat, formaldehyde, and cold acetone fixation with or without proteinase K digestion to determine the best method. Cold acetone fixation without proteinase K was chosen due to its superior performance and simplicity. (Supplementary Appendix). The prepared clinical respiratory specimen slides, a negative control, and a positive control were stained simultaneously. The negative and positive controls were prepared from a BHK (baby hamster kidney) cell line and Chikungunya virus infected BHK, respectively. Blocking with 10% normal goat serum (NGS) made no difference in the signal to noise ratio, or reduction of non-specific signals. Thus, the blocking step was omitted. The primary anti-dsRNA antibody [J2] monoclonal antibody from Scicon® (product number 10010500 at 1:200 dilution) in phosphate buffered saline (PBS) with 0.04% TritonX and 5% normal goat serum (NGS) was applied to the prepared slides. The slides were incubated at room temperature for 60 min. After 3 washes with PBS, the secondary antibody (Goat anti-mouse IgG-AF488 from Invitrogen® (ab 150117) at 1:200 dilution plus 100 ng/ml of DAPI) in PBS with 0.04% TritonX and 5% NGS was then applied and the slides were incubated at room temperature for 30 min. After 3 additional washes with PBS, each slide was mounted with Prolong Diamond Antifade Mountant from Invitrogen® (Catalog number P36970) and a coverslip. The fluorescent signal was visualized with a fluorescent microscope (Zeiss Axio Imager M1m) using the FITC channel for dsRNA and the DAPI channel for the nucleus. The images were captured with a Zeiss AxioCam MRm 1.4 megapixels monochrome microscope camera and Zeiss Axio Vision SE64 Rel. 4.9.1 software. The signal from each slide was compared to positive and negative controls to determine the positivity and negativity. All slides were independently visualized and interpreted by two trained investigators, blinded from the microarray results. A dsRNA positive result was determined by the presence of a group of intracellular bright green puncta in the FITC channel. We excluded any signals that were outside the cell boundaries seen in the DAPI channel (nucleus) and brightfield (cytoplasm). Fluorescent signals from artifacts like crystals were also ruled out. If the signal in the FITC channel was also seen in the TRITC channel, it would be considered as autofluorescence, which generally emits its fluorescent signal across all channels. When the results were inconsistent between the two investigators, those particular slides were adjudicated by a third investigator. The results were then compared to the microarray as a reference standard, for calculation of sensitivity and specificity. Automated microarray (The NxTAG® Respiratory Pathogen Panel) is a molecular technique routinely used in our hospital to detect viruses in respiratory specimens. The microarray can detect 19 viruses simultaneously, including adenovirus, human bocavirus, coronaviruses (HKU1, 229E, NL63, and OC43), human metapneumovirus, enteroviruses/rhinoviruses, influenza A viruses (H1 and H3), influenza B virus, parainfluenza viruses (types 1, 2, 3, and 4), and respiratory syncytial virus (A and B). Written informed consent was obtained from patients. The anti-dsRNA immunofluorescence results were recorded as positive or negative, and the cellularity content for each slide was graded from 1 þ to 4þ. The grading system was as follows: 1 þ represented average cells on a slide of less than 11 cells per low power field (LPF), 2 þ for 11-20 cells per LPF, 3 þ for 21-50 cells per LPF, and 4 þ for more than 50 cells per LPF. Types or sources of respiratory specimens were also recorded. After the results of the anti-dsRNA immunofluorescence from all slides were finalized by the investigative team, the random number labels were unmasked. The investigators reviewed the enrolled patients' charts and recorded each patient's information, such as gender, age, underlying diseases, antiviral drugs, antibiotics, and immunosuppressants, duration of onset, microarray results, and the final diagnosis at the time of patient discharge. Sensitivity, specificity, accuracy, positive predictive value (PPV), negative predictive value (NPV), accuracy and likelihood ratios of dsRNA detection with immunofluorescence were calculated against standard test (microarray) results as a gold standard. Clustered bootstrapping with 1000 replications was used to derive 95%CI around each parameter and account for correlation in patients with >1 test result during the study [16] . Inter-rater agreement was determined with Cohen's kappa (κ). Software used for analysis was STATA 16 (Statacorp, College Station, TX). We hypothesized that the anti-dsRNA IF accuracy would be similar to that described in previous viral protein antigen immunostaining studies. Assuming a sensitivity and specificity of 85, we aimed to estimate these parameters with a precision of AE5% using the following . Since the prevalence of positive microarray for respiratory virus in our hospital was approximately 60% of all specimens collected, the calculated targeted sample size was 195 (n/0.6). In accordance with the Code of Ethics of the World Medical Association (Declaration of Helsinki), this study was approved by the Institutional Review Board (IRB number 168/61), Institutional Biosafety Committee (CU-IBC number 008/2018), Faculty of Medicine, Chulalongkorn University, and registered in Thai Clinical Trial Registry (TCTR20180129003). All funding sources had no involvement in the study design, specimen collection, analysis, interpretation, and preparation/submission of the manuscript. A total of 195 specimens from 148 unique patients from October 2018 to March 2019 were consecutively enrolled in this study; 24, 5, 3 and 1 patients had 2, 3, 4 and 5 tests, respectively. Demographic and clinical characteristics are summarized in Table 1 . Median patient age was 3.4 years (interquartile range (IQR) 0.83-55; range 0.10-91 years). One hundred and seventy-two (88.2%) patients reported a symptom onset of less than 7 days at specimen collection, with the majority less than 3 days prior to investigation. One hundred and thirty-two patients (89.2%) had comorbidities. Forty-seven (24.1%) patients received immunosuppressive agents. Thirty (15.4%) patients were taking antiviral drugs before specimen collection, and 150 (76.9%) patients received multiple antibiotics prior to specimen collection. The majority of specimens were collected from the upper respiratory tract, including 167 (85.6%) nasopharyngeal swabs and 2 (1.0%) throat swabs. One hundred and one (51.8%) of 195 specimens were positive for dsRNA as detected by anti-dsRNA immunofluorescence (Figure 1 ). There were 29 discordant results from the microarray and immunofluorescence assays. The positive and negative concordant and discordant results are shown in Table 2 . Compared to the molecular technique (microarray), the immunofluorescence method had a sensitivity of 83.3% (95% CI 76.1%-90.2%), specificity of 87.4% (95% CI 80.8%-93.7%), positive predictive value of 89.1% (95% CI 82.5%-94.9%), negative predictive value of 80.9% (95% CI 73.1%-88.9%) and an accuracy of 85.1% (95% CI 80.1%-89.9%). The positive likelihood ratio (þLR) was 6.6 (95%CI 4.3-13.5) and the negative likelihood ratio was 0. All slides were visualized and interpreted by two trained investigators independently. Expected agreement between the investigators was 50.0% and actual agreement was 69.7%, κ ¼ 0.394 indicating fair agreement unlikely due to chance (P < 0.001). In our study, the accuracy of anti-dsRNA IF was comparable to viral protein detection rates reported in previous studies [11, 12] . The major advantages of anti-dsRNA IF are its simplicity, short turn-around time of approximately 2.5 h, and low cost (less than $3 US reagent cost per test), making it possible to be used for a point-of-care screening and epidemiologic studies. The test results could be available in less than an hour if we omitted the secondary antibody step with a dye-conjugated anti--dsRNA as the primary antibody and incubation time was further optimized. Importantly, this technique also has the potential to detect emerging or unknown viruses, since the knowledge of the specific sequence of virus is not required. The positive and negative likelihood ratios were consistent with a 35% increase or decrease in the post-test probability of disease, respectively [17] . Seventy-three samples were positive for enterovirus/rhinovirus (þssRNA virus), the most common virus detected by microarray in this study. Out of these 73 samples, 64 (87.67%) were positive for anti-dsRNA IF. The sensitivity dropped to 74.23% with other viruses, mainly -ssRNA and DNA viruses. The increased sensitivity in the infant group (<2 years, Figure 2 ) was most likely due to a higher percentage of enterovirus/ rhinovirus (78.13%) in this groups. False negatives were inevitable due to the paucity of infected cells that were positive for dsRNA signal found on each slide. Subgroup analysis showed higher sensitivities as the cellularity grade increased. However, the specificity consequently decreased because of more false positive results from autofluorescence or non-specific staining that were observed in the higher cellularity groups. This could be improved by counting the cell numbers in each sample and adjusting the volume accordingly by cytocentrifugation to arrive at the proper cellularity level (grade 3þ, 21-50 cells/LPF, Figure 2 ). Decreased sensitivity was also observed in the group given anti-viral treatment (Figure 2) . False positive signals might originate from bacterial flora or bacteriophages harboring dsRNA. In rare cases with mutations in the PNPT1 gene, which controls dsRNA degradation in mitochondria, dsRNA accumulation in mitochondria could be detected with IF [18] . Positive anti-dsRNA IF in novel viral infection, undetected by microarray, is also possible. Recently, anti-dsRNA immunostaining has shown positive results in cells and formalin-fixed paraffin-embedded (FFPE) animal tissues experimentally infected with SARS-CoV-2 [19] . Unfortunately, our study detected coronaviruses in only six samples by microarray, an insufficient number to draw robust conclusions regarding anti-dsRNA IF and coronaviruses. The major disadvantage of our approach is low reliability. The interpretation of the fluorescent signals is heavily based on the rater's experience. Unlike Gram's stain or other simple staining techniques, there is no reference textbook to guide IF staining of dsRNA. We chose the virus-infected/non-infected cell cultures for rater training. Control respiratory virus slides were also purchased for training, but the anti-dsRNA IF on these slides showed very poor signals unlike our freshly prepared cells. We also prepared some positive and negative clinical specimens for training, but this was not very helpful due to a high variation of clinical specimens and a very low number of infected cells. The overall results showed fair agreement between raters (Kappa ¼ 0.394, p < 0.0001). The interrater agreement did improve over time despite the lack of awareness by the raters about the microarray results until the end of the study. Subgroup analysis showed that the agreement was of moderate degree in the second half (96 samples, Kappa ¼ 0.439, p < 0.0001), an improvement from the first half (99 samples, Kappa ¼ 0.323, p ¼ 0.0006). In the future, machine learning on digital files of whole slide images might overcome the low reliability problem with human raters. One limitation of anti-dsRNA IF is that it cannot differentiate types of viruses. Rather than being a replacement of a molecular test, it should be an add-on test to raise a clinician's suspicion on unknown viral infection, of which further investigation is required. More cases may be correctly diagnosed as viral rather than bacterial infections, which would in turn reduce the inappropriate use of antibiotics and the problem of multidrug-resistant pathogens. Similar to 16S rRNA gene PCR and sequencing for universal identification of both known and unknown bacteria, dsRNA enrichment by immunoprecipitation for PCR and sequencing (dsRNA-seq) has successfully detected unknown viruses in in vitro, plants, and animals [20, 21] . This might be worthy of further investigation in human specimens. In summary, our current study demonstrates that the anti-dsRNA IF test may be used in respiratory samples with more than 80% accuracy, if better reliability is achieved by more training. Further improvements in sensitivity and specificity can likely be achieved by suitable pretreatment of samples, optimizing and standardizing cell numbers on the slides, and developing as well as validating methods for computerbased slide reading and interpretation. In resource limited settings where molecular testing might not be readily affordable, the anti-dsRNA IF technique might provide a sentinel signal if a new virus was to emerge somewhere. Author contribution statement Kornthara Kawang and Udsanee Naoudom: Performed the experiments; Wrote the paper. Ekasit Kowitdamrong: Contributed reagents, materials, analysis tools or data. Stephen J. Kerr and Kiat Ruxrungtham: Analyzed and interpreted the data; Wrote the paper. Voraphoj Nilaratanakul: Conceived and designed the experiments; Performed the experiments; Analyzed and interpreted the data; Wrote the paper. Data will be made available on request. All of individual participant data are available from the corresponding author, [VN], upon reasonable request. The authors declare no conflict of interest. Supplementary content related to this article has been published online at https://doi.org/10.1016/j.heliyon.2021.e08471. COVID 19 and Spanish flu pandemics: all it changes, nothing changes The global Virome project Selective bottlenecks shape evolutionary pathways taken during mammalian adaptation of a 1918-like avian influenza virus Influenza virus-host Co-evolution. A predator-prey relationship? 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