TRUSTED DATA FOR FASTER DISCOVERY AND SAFER CARE
Safe care, optimized operations, clinical decision-making, research and development, and regulatory compliance all depend on trusted data. Fragmented data across clinical, operational, and third party systems creates ongoing data quality issues that undermine patient care, research, efficiency, and compliance.
Anomalo helps healthcare and life sciences teams modernize their data foundations by automatically detecting and resolving issues before they affect research, care, or operations. With AI-native monitoring across clinical, operational, trial, and real-world evidence data, Anomalo ensures every decision and AI workflow is powered by clean, compliant, high-quality data.
Key Benefits
Detect missing vitals, incomplete lab results, irregular coding patterns, unlinked encounters, and schema drift across electronic health records systems to ensure clinicians and care teams make decisions based on complete, trustworthy data.
Reconcile vendor and product feeds, detect mismatches in purchase orders vs. fulfillment, and monitor availability of medical supplies, pharmaceuticals, and device inventories.
Automatically detect demand anomalies, clinical pattern shifts, or inconsistent inputs feeding prediction models, including acuity scores, length of stay predictions, risk rankings, forecasting models, and RW analysis to ensure reliability.
Monitor exposure of protected health information, schema changes, and anomalies across clinical, claims, trial, and manufacturing datasets to support HIPAA, FDA, QMS, and GxP data integrity requirements.
Identify unexpected drops in Current Procedural Terminology and International Classification of Diseases (CPT/ICD) coding patterns, missing claim attributes, eligibility data gaps, and anomalies affecting reimbursement accuracy and compliance.
Automate profiling, detection, root-cause analysis, ticket creation, and alert routing to minimize manual data validation across clinical operations, research & development, and analytics teams.
Healthcare and life sciences organizations face challenges relating to high-risk, high-volume, and highly regulated data:
of healthcare professionals are concerned about the quality of data received from external sources
Incomplete or inconsistent EHR data, including missing vitals, unstructured documentation problems, lab result gaps, or inaccurate timestamps lead to care delays, misclassification of risk, and safety concerns.
Across EHRs, claims systems, imaging archives, lab files, and device data, missing or mismatched fields degrade care coordination and analytics.
of physicians said that getting the right clinical information at the right time is very important to them
is lost in direct costs each day a clinical trial is delayed
GxP, FDA 21 CFR Part 11, clinical trials, and safety reporting demand validated, traceable data pipelines.
Risk scoring, readmission prediction, triage, forecasting, staffing, and cost-of-care models all deteriorate when upstream datasets are incomplete, stale, or inconsistent.
is spent annually to care for patients readmitted to the hospital within 30 days for a previously treated condition
Reliable clinical, supply chain, claims, and research data power safe care, effective operations, and trusted AI applications.
Anomalo automatically learns normal patterns within healthcare datasets such as seasonality, census changes, claim submission cycles, trial cohort variations, and clinical documentation trends to detect issues before they reach clinicians, analysts, or regulators.
Anomalo performs full-table scans to detect distributional anomalies such as sudden drops in patient segments, missing lab fields, inconsistent time-series device data, duplicates, and drift across EHR or claims formats.
SHAP-based machine learning surfaces what changed, where, and why.
Healthcare and life sciences companies rely on complex, multi-system data environments.
Anomalo supports major health data platforms, including:
BigQuery, Databricks, Redshift, Snowflake, Synapse, Oracle, EHR/EPM ingestion pipelines, lab, claims, and HL7/FHIR data stores, and workflow tools such as Jira, Microsoft Teams, ServiceNow and Slack.
Anomalo powers data quality for some of the world’s most demanding enterprises, monitoring thousands of tables, hundreds of thousands of columns, and petabytes of data.
SOC 2 Type II, HIPAA compliance, support for PCI-DSS compliance, and full in-VPC deployment ensure sensitive clinical, claims, genomic, and research data never leaves your environment.
Our Customers
Learn how healthcare providers, payers, device companies, and life sciences organizations use Anomalo to catch data problems early, with accurate data yielding safer care, operational efficiency, and AI-ready pipelines.