Break Through the NGS Interpretation Bottleneck To Improve Patient Outcomes
eBook
Published: May 15, 2025

Credit: Illumina
Next-generation sequencing (NGS) has revolutionized oncology diagnostics. However, the interpretation of complex genomic data has become a critical bottleneck in clinical workflows.
Manual data analysis can delay results for weeks, causing clinicians to initiate non-targeted treatments while waiting for more comprehensive genomic profiles.
The latest software solutions can transform this manual process into a streamlined workflow, reducing the time it takes to achieve actionable insights and timely clinical decisions.
This eBook explores how to enhance throughput while maintaining high-quality variant analysis and reporting.
Download this eBook to discover:
- How interpretation bottlenecks impact patient care
- The components of effective NGS analysis software
- Key considerations for selecting software that meets both clinical and research needs
Unlocking insights with NGS tertiary
analysis software
Navigating the
somatic oncology
interpretation
bottleneck
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Table of contents
3 Introduction
4 The burden of manual interpretation
5 Benefits of software-enabled variant interpretation
14 Considerations for software interpretation
17 Summary
18 References
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Introduction
The landscape of genomic research and clinical diagnostics in
oncology has witnessed a remarkable trajectory over recent
decades, in large part due to the advent of next-generation
sequencing (NGS). Tests like comprehensive genomic profiling
(CGP), a pan-cancer NGS assay that broadly assesses hundreds
of actionable cancer biomarkers and genomic signatures. These
sweeping assays are providing deep insights into the genomic
drivers of cancer that have fueled groundbreaking targeted
therapies that have been shown to improve patient outcomes, while
exponentially generating more data.1-3
Amidst this wealth of genomic information lies a critical challenge—
the accurate and time-efficient interpretation of complex NGS data
in the context of oncology. Performing variant interpretation and
report generation manually is a labor-intensive and time-consuming
process, typically taking between 7-8 hours that can impact clinical
decision making.4 A survey analyzing 170 responses from oncologists
revealed that most respondents considered one week (46%) or two
weeks (52%) an acceptable turnaround time to receive NGS results,
yet 37% typically wait three or more weeks.4 Community oncologists
who waited more than three weeks for results were more likely to
initiate nontargeted treatment, contravening professional clinical
guideline recommendations.
This study demonstrates an urgent need to speed up variant
interpretation and translate test results into actionable clinical
decisions. Using specialized software that facilitates variant
interpretation and reporting can significantly improve a lab’s
efficiency, reducing the time and effort required to as little as
~30 minutes for faster clinical decision making (Figure 1).4
Designed for researchers and clinicians involved in the delivery
of NGS-based somatic oncology testing, this eBook delves into
the complexities of interpretation and highlights the critical need
for innovative solutions to bridge the gap between raw data and
actionable insights.
of oncologists currently
wait ≥ 3 weeks for
NGS results4
37%
Figure 1: Time to report with interpretation software—Software significantly reduces the time required to
generate a report by automating complex processes, increasing efficiency, and reducing human errors to enable
timely clinical decision making.
7-8 hours
~30 minutes
Manual
Software
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Figure 2: The informatics interpretation bottleneck—Prioritizing pertinent variants, staying up to date with growing knowledge,
updating past interpretations, standardizing interpretation across limited trained personnel, and other challenges results in significant
increases in turnaround times per report and present a bottleneck for the typical state of manual, high-touchpoint methods of data
interpretation.
The burden of variant interpretation
Oncology testing using NGS, from targeted to comprehensive
genomic panels, exomes, and genomes, generates massive
amounts of data that can represent a significant burden for labs
needing to scale data analysis and interpretation. As testing
volumes increase, so does the pressure to deliver meaningful
and consistent results in a timely manner. Therefore, finding a
balance between high-quality data interpretation and managing
operational efficiency becomes increasingly crucial. Variant
interpretation and reporting, coupled with an ever-increasing
demand for testing, have the potential to create a significant
bottleneck to lab operations (Figure 2).
“If you are generating this
massive amount of data, you
need to interpret this in a
meaningful way. With these
thousands or even millions
of different variants, even in
intergenic regions, it’s very hard
nowadays to reliably interpret
them in a way that is clinically,
directly applicable. Variant
interpretation is still heavily
based on human resources and
manual curation. We need to
come to a point where more
and more of this part [of the
workflow] can be automated to
some extent.”6
Albrecht Stenzinger
Director, Center for Molecular
Pathology, University of Heidelberg
Significant
turnaround time
Lack of trained
personnel
Limited ability
to prioritize
variants
Difficulty staying
current with expanding
knowledge
Arduousness of updating
past interpretations
Lack of
standardization
across personnel
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Benefits of software-enabled variant interpretation
Data analysis for NGS typically includes three steps: primary, secondary, and tertiary
analysis. After libraries have been prepared and sequenced, Real-Time Analysis (RTA)
software on board the sequencing system performs primary analysis and provides base
calls and associated quality scores. Next, sequencing reads are aligned and assembled,
providing the full sequence for a sample, and then variants are called, enabling variant
calling at the secondary analysis step. This step typically reveals thousands to millions
of variants, which are then interpreted in the final step of NGS data analysis called
tertiary analysis (Figure 3).
Call
variants
Secondary
analysis
Tertiary
analysis
Prepare libraries Sequence Analyze
Primary
analysis
Call
bases
Interpret
variants
Perform
quality control
Annotate and
prioritize
Classify
and interpret
Generate
report
Pulling out relevant, meaningful variants from the thousands of possibilities can be
hampered by a time- and labor-intensive variant interpretation workflow that involves four
steps: variant quality control and filtering, annotation and prioritization, classification and
interpretation, and report generation (Figure 4).
Figure 3: Standard NGS workflow—Library preparation and sequencing are followed by data analysis,
which typically includes base calling, variant calling, variant interpretation and reporting.
Figure 4: Variant interpretation workflow—Variant interpretation, also referred to as tertiary analysis,
involves, at a high level, four steps.
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Variant QC
Comprehensive quality control (QC) is a fundamental step for NGS data analysis and
should be performed before the data are used for interpretation.7
It is important to
determine if the coverage of the tested genes is sufficient to detect or rule out specific
mutations that could be critical for diagnosis or treatment recommendations. Depending
on the variant class, different QC metrics are important. For example, the number of
paired and split reads can help ensure the quality of detected fusions.
A state-of-the-art interpretation software imports variant calling data (VCF files) and
associated QC metrics directly from secondary analysis software and can enable
several important features for variant QC:
• Sorting and filtering of variants based on multiple parameters, including variant allele
frequency (VAF), variant quality scores (QUAL), strand bias (SB), and number of
paired or split reads8
• Setting thresholds that automatically highlight certain metrics as PASS or FAIL
• Visualizing raw and other data to assist with QC via coverage plots and VAF plots
• Flagging sequencing artifacts, for example, by inspecting a data set of samples
accumulated in a laboratory
• Reviewing aligned sequencing reads using The Integrative Genome Viewer (IGV) or
other genome browser for visual inspection of called variants9
Advantages of software-assisted variant QC include:
Time savings
resulting in increased
efficiency and capacity
Accuracy improvements
leading to reduced risk of
reporting false positives
Consistency of results
among analysts executing
a standardized workflow
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Variant annotation
After filtering out variants not passing QC, identified variants are annotated with functional
information for interpretation. Genomic databases that are used to facilitate variant
interpretation by cataloging whether a variant has previously been reported as associated with
disease or a drug response are called “knowledge bases.” These knowledge bases, trusted
and adopted by clinicians and researchers worldwide, contain varying information ranging
from biological and functional data for translational research to clinical applications, eg, the
OncoKB precision medicine knowledge base from Memorial Sloan Kettering Cancer Center,
CIViC, and The Jackson Laboratory Clinical Knowledgebase (JAX-CKB) (Table 1).9,10
Variants that are not yet described in knowledge bases can be evaluated with the help of
computational tools aiming to predict variants’ impact on protein function, eg CADD, REVEL,
SIFT, SpliceAI, and others. Several such tools use artificial intelligence (AI) algorithms to
enhance their performance.11–13 Multiple tools are typically used simultaneously for variant
annotation to increase confidence in the results.
Using knowledge bases and other data sources while automating the querying process
streamlines variant annotation, enabling rapid and systematic retrieval of information.
Annotation functionalities offered within a commercial interpretation software can include:
• Access to multiple sources and knowledge bases in one view
• Updates to annotation sources at a regular cadence
• Prediction of functional impact of variants using computational tools
• Ability to sort, filter, and prioritize variants based on annotated information
• Data visualization, eg, map known pathogenic variants on protein domains
By simultaneously accessing various knowledge bases and performing regular updates,
annotation features within an interpretation software offer several key benefits:
Comprehensive insights, providing thorough information on variant
associations with diseases and therapies for larger tests by integrating the
breadth of coverage of multiple sources
Accurate information, ensuring trusted results with additional QC by
comparing variant records between different sources side by side
Novel variant interpretation, going beyond known variants by harnessing
multiple functional predictors to decipher the impact of novel variants on
protein function
Up-to-date insights, keeping pace with expanding knowledge, benefitting
from software–enabled new information alerts
Increased efficiency, reducing the time to results by focusing on the
interpretation of variants pertinent to the case
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Table 1: Commonly used knowledge bases and other sources
Population databases Update frequency
Genome Aggregation Database (gnomAD) Variable
International Genome Sample Resource Variable
Cancer databases
The Cancer Genome Atlas Program (TCGA) Variable
Catalogue of Somatic Mutations in Cancer (COSMIC) Four times a year
Clinical Interpretation of Variants in Cancer (CIViC) Daily
Oncology Knowledge Base (OncoKB) Approx. monthly
The Jackson Laboratory Clinical Knowledgebase (JAX-CKB) Weekly
ClinVar Monthly
National Library Clinical Trials Daily
Online Mendelian Inheritance in Man (OMIM) Daily
Scientific literature
PubMed Daily
Functional impact prediction tools
PhyloP Variable
PhastCons Variable
SpliceAI Variable
VarSEAK Variable
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Variant interpretation
After variant annotation, variants are classified into one of five categories with respect to
their pathogenicity (also called oncogenicity in the context of cancer). This categorization
is based on the level of evidence that a variant is oncogenic following established
guidelines (Table 2).
After classification, typically only oncogenic and likely oncogenic variants are further
considered. At the next step, variants are assigned to a tier based on their clinical
significance and actionability, according to published standards and guidelines. To
determine a variant’s clinical significance, the variant needs to be evaluated for:
• Association with sensitivity, resistance, or toxicity to a specific therapy
• Inclusion criterion for clinical trials
• Association with disease prognosis
• Association with cancer diagnosis
It is common for labs to skip the variant classification step and determine actionability
right away for well-studied variants for which information on clinical significance is readily
available.
Interpretation and reporting of variants associated with increased hereditary risk of
cancer is an additional step in the variant interpretation process that labs may consider
implementing. Variant interpretation in this case would follow established guidelines for
pathogenicity of germline variants.14
An optimized variant interpretation solution streamlines the application of various
guidelines, enabling rapid and high-throughput variant classification and tier assignment,
which is particularly valuable when dealing with a large volume of variants. Also,
software can store and reuse variant interpretations for new reports, accelerating data
interpretation.
Variant interpretation functionalities offered within a state-of-the-art interpretation
software include:
• Precalculation of variant classification and actionability tiers
• Enablement of guided manual interpretation based on the latest guidelines
• Customization of variant tiers and other aspects of variant interpretation, eg, to meet
regional needs
• Storage and reuse of variant interpretations for new reports
• Assignment and tracking of user actions
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Consistent classification, producing standardized and reproducible
results that reduce subjectivity across analysts by applying
predefined algorithms and guidelines, eg, oncogenicity calculators
In the context of clinical decision making, the features of a modern interpretation
software minimize the laboratories’ burden and offer value through:
Ease of maintenance, with alerts about new information and full
history of interpretation, review, and approval actions for previously
interpreted variants
Localized content, addressing regional needs with customizable
tiering categories, local clinical trials, and the ability to translate to
local languages
Extensive time savings, from precalculating variant classification
and reusing past interpretations, freeing up analysts’ time to focus
on more unique and complex cases
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Standardization of somatic
variant classifications per
Belgian ComPerMed15
• Pathogenic
• Likely pathogenic
• Variant of uncertain significance
(VUS)
• Likely benign
• Benign
Oncogenicity/pathogenicity guidelines
Actionability guidelines
Joint consensus recommendations
of the Association for Molecular
Pathology (AMP), American
Society of Clinical Oncology
(ASCO), and College of American
Pathologists (CAP)16
Tier 1: Variants with strong
clinical significance
Tier 2: Variants with potential
clinical significance
Tier 3: Variants of unknown
clinical significance
Tier 4: Variants deemed benign or
likely benign
Joint recommendations of Clinical
Genome Resource (ClinGen), Cancer
Genomics Consortium (CGC), and
Variant Interpretation for Cancer
Consortium (VICC)8
• Oncogenic
• Likely oncogenic
• VUS
• Likely benign
• Benign
European Society of Medical Oncology
(ESMO) Scale for Clinical Actionability
of Molecular Targets (ESCAT)17
ESCAT Tier I: Alteration–drug match is
associated with improved outcome in
clinical trials
ESCAT Tier II: Alteration–drug match
is associated with antitumor activity,
but the magnitude of the benefit
is unknown
ESCAT Tier III: Alteration–drug
match suspected to improve
outcome based on clinical trial data
in other tumor types or with similar
molecular alteration
ESCAT Tier IV: Preclinical evidence
of actionability
ESCAT Tier V: Alteration–drug
match is associated with objective
response, but without clinically
meaningful benefit
ESCAT Tier X: Lack of evidence for
actionability
Joint consensus recommendation
of the American College of Medical
Genetics and Genomics (ACMG)
and the Association for Molecular
Pathology (AMP)14
• Pathogenic
• Likely pathogenic
• Uncertain significance
• Likely benign
• Benign
Food & Drug Administration (FDA)18
Level 1: Companion diagnostics
Level 2: Cancer mutations with
evidence of clinical significance
Level 3: Cancer mutations with
potential clinical significance
Table 2: Published guidelines on interpreting somatic oncology variants from professional societies
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Generate report
The last step of NGS tertiary analysis involves report generation, where the results of
interpretation are compiled into a comprehensive and informative document (Figure 6).
Figure 6: Typical report generated with commercial interpretation software—Results are organized into a concise structured
format that should be easy to understand for an oncologist. Common report sections include: (1) Case, patient, and sample
information, providing key details to uniquely identify the sample and the patient; (2) Report summary, including main
takeaways from report findings; (3) Positive findings, providing identified variants, associated drugs, and diseases, as well
as classification and actionability tier; (4) Negative findings, listing genes that were in scope of testing but did not return any
findings; (5) Relevant clinical trials, matching patient biomarkers, location, and other criteria; (6) Biomarker details, including
summaries for positive findings and other additional details; (7) Report signoff section, including date and name for report
approval.
1 Case, patient, and sample information 2 Report summary 3 Positive findings 4 Negative findings
5 Relevant clinical trials 6 Biomarker details 7 Report signoff
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Software-enabled variant reporting addresses the burden of organizing test results into
a PDF document manually by:
• Ensuring the completeness and accuracy of a report by automatically incorporating all
relevant variant interpretations and references
• Providing a visually intuitive report, making it convenient for the oncologist to find
specific information easily
• Tracking changes made to reports after they are issued and storing a full history for
each report in case of modifications or errors
The report contains the identified genetic variants, their associations with therapies
and diseases, clinical significance, and any other relevant information, organized and
presented in a structured format (Figure 6). Insights in the report are used to help guide
clinical decision making, eg, developing a treatment plan or recommending enrolling a
patient in a clinical trial.
A modern interpretation software offers users several features for report generation
functionality. These enable users to:
• Populate reports with interpreted variants automatically
• Provide different report templates for different tests offered by the lab
• Customize report templates per lab requirements
• Generate a report summary automatically
• Store and retrieve past reports and track changes made to them
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Considerations for software implementation
Currently, there are multiple commercially available interpretation and reporting
software options. Labs should carefully evaluate their choice of software for
implementation to be sure that it meets their specific needs. There are several
key considerations for implementing tertiary analysis software, including:
accuracy of content, approach to curation, usability, customization, report
readability and integrations, and data security.
Accuracy of content
Accuracy of content refers to the correctness and reliability of the scientific and
clinical information used for variant annotation and prioritization.21 Factors of
time, with regard to the timeliness of the integrated knowledge, and geography,
are crucial contributors of accuracy. In view of changing guidelines by different
medical societies, different drug approval timelines around the world, and the
rapidly changing nature of science, any knowledge sources integrated within
a software need to be updated regularly to reflect advancements in clinical
research and disease management. It is favorable for knowledge sources within
a variant interpretation software platform to be updated as frequently as once
a month.
Approach to curation
The approach to curation consists of how variants are prioritized, annotated,
and interpreted.22 In principle, the more knowledge bases or resources included,
the more comprehensive the annotation will be. Missing information from some
important knowledge bases will result in the annotation being incomplete and
potentially misleading. Too much information could include aspects that are
irrelevant for annotations and make it challenging for lab personnel to filter out
the most critical information for clinical practice.4 Therefore, it is critical to have
balanced information captured in the annotations by including the right choices
of knowledge bases. Ideally, all knowledge bases that are desired by the lab
are included in a single tertiary analysis software interface for streamlining
interpretation, updating knowledge bases, and avoiding fees for accessing
multiple commercial knowledge bases.
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In addition, the criteria a software uses for evidence to support an assertion
of clinical actionability for a given variant is key to facilitating standardized
practice in precision medicine. Professional societies have published guidelines
on interpreting somatic oncology variants, such as recommendations from
the FDA and a joint consensus from AMP, ASCO, CAP, ACMG, and ESMO
(Table 2). However, these guidelines have some degree of differences in their
classification systems.21 Labs should carefully evaluate the differences in
guidelines that a software adopts to determine the most suitable approach for
their own population needs.23
Usability of software
Usability, the intuitiveness and user friendliness of a software, can be an
important consideration for labs. An optimal user experience can promote
efficiency, especially for lab staff with minimal bioinformatics expertise.
Software usability covers a wide range of criteria, such as setup and
maintenance, flexibility for customization, and data management.21
Customization capabilities
Interpretation software that offers customization options is highly desirable for
institutions with varying clinical needs, in part based on regional differences.
For example, a variant could be classified as Tier I according to standard
guidelines because it has a matched approved targeted therapy; however, the
targeted therapy may not be available in the local hospital formulary due to
reimbursement reasons. Hence, it may be appropriate to downgrade the variant
to a lower tier. In such cases, a software that allows information to be presented
originating from the lab’s prior case interpretation is critical to ensure relevance
to their local practice.
System integration
The report should also be easily connected to, and displayed in, the in-house
lab information system (LIS) and electronic health record (EHR). Findings should
be easily pulled out from other results so that oncologists do not have to log on
to multiple platforms to access critical information. The variant interpretation
and reporting software should easily integrate with software necessary for
other steps within the NGS workflow, including LIMS and secondary analysis
solutions, enabling seamless data flow from sequencing to interpretation. Data
management and connectivity to the lab’s workflow are paramount.
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Data security and deployment options
Maintaining the privacy of highly sensitive personal information
analyzed and stored in any interpretation software is fundamental
and requires enterprise-level protection. When evaluating commercial
interpretation software, consider three elements of data protection
features: (1) product-specific security and privacy functionality, (2)
regulatory compliance, and (3) relevant deployment options.24,25
Institutions should look for the following key security and privacy
features when considering a commercial software:
• Full audit trails to ensure accountability for all actions and objects
• High-level data encryption both “in transit” (TLS 1.2 at a minimum)
and “at rest” (AES-256) to maintain data confidentiality
• Fully automated data management, retention, and performance of
regular data integrity checks to protect against data loss
• Multifactor authentication and exceptional login policies for
enhanced security
Any interpretation software of choice should be developed in
accordance with industry best practices and relevant standards under
an enterprise-level Quality Management System (QMS). Institutions
operating in regulated environments are often required to maintain
compliance with global and regional data protection laws, and should
identify vendors whose QMS aligns with the following certifications:
• International Organization for Standardization (ISO) 27001
• ISO 13485
• General Data Protection Regulation (GDPR)
• Health Insurance Portability and Accountability Act (HIPAA)
Institutions should examine how software options will be hosted; this
could include on-premises server or cloud-based deployment options.
In general, laboratories that choose to interpret and store their NGS
data locally should expect higher investment times for staying up to
date with security and compliance requirements. In contrast, cloudbased solutions offer a scalable, cost-effective deployment option
for institutions looking to shorten turnaround times. If a cloud-hosted
solution is chosen, the vendor’s cloud service provider should be
considered, as data storage and handling policies may differ between
global and regional providers.
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Discovery and translational research use cases
Variant interpretation and reporting software can also be used in a research
setting, enabling laboratories to capture critical knowledge on variant
associations with biological processes, disease origins, and biomarker potential.
To enable such use cases at scale, researchers should consider a solution with
additional functionalities to those previously described:
• Aggregation and querying of structured multimodal data sets
• Building and mining cohorts of molecular and clinical research data
• Collaboration and sharing of data within a secure, enterprise-level workspace
• Customization and automated generation of a research report
• Visualizations for exploring genome view, DNA and RNA coverage plots, VAF,
distributions, and more
Clinical laboratories focused on test development, discovery, and translational
research use cases may also consider using variant interpretation and reporting
software, specifically for the following:
• Biomarker development studies—selecting genes for a panel, or
understanding the performance of new emerging biomarkers in a
retrospective cohort
• Assay utility studies—estimating the number of findings in a test and
comparing with alternative solutions
• Methodology comparison studies—benchmarking elements of a clinical
report for cost effectiveness and assessing test settings such as impact of
coverage, read length, and filtering of findings
• Longitudinal studies—for example, tracking tumor mutation burden (TMB)
and occurrence of new variants in samples with time and its association with
disease progression
Summary
Now more than ever, labs need optimized software solutions that will decrease the
time and effort required to extract and report meaningful biological insights from
genomic data. When evaluating commercially available software options, labs should
consider each step of the interpretation and reporting workflow and the features
each software option offers. Labs should select the software that best meets their
needs and overcomes the informatics bottleneck to deliver a streamlined, simplified,
accurate, and consistent workflow for variant interpretation.
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UNLOCKING ACTIONABLE INSIGHTS
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M-GL-01601 v1.0
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