Research
OpenStep in Research Contexts
OpenStep was built with clinical transparency as a core principle. That same foundation makes it suitable for research applications where clarity, reproducibility, and raw data access are essential.
OpenStep does not rely on proprietary “black-box” scoring systems. All derived metrics are computed using clearly defined signal-processing steps that are documented and available for review.
For research teams requiring insight into data provenance, transformation, and computation, OpenStep provides both transparency and control.
Raw Data Export
OpenStep supports export of raw sensor data.
Exported data includes:
Time-stamped inertial measurements
Original sampling resolution
Unfiltered acceleration data
Session-level metadata
Raw data export enables:
Independent verification of derived metrics
Reprocessing using custom pipelines
Validation against external systems
Secondary analysis beyond the OpenStep interface
OpenStep does not restrict researchers to precomputed outputs. All derived metrics can be recomputed externally from exported raw data.
This ensures data ownership remains with the clinician or research team.
Transparent Metric Methodology
Each metric within OpenStep is derived using documented computational steps.
For example:
Fixed-duration time windows
Explicit filtering approaches
Defined thresholding procedures
Robust central tendency (e.g., median-based interval estimation)
Clearly described confidence metrics
The intent is not to obscure interpretation but to make every step reproducible.
OpenStep is designed so that:
Raw data are preserved
Derived values are recomputable
Assumptions are explicit
No hidden normalization or performance scoring is applied
This transparency supports peer review, publication, and replication.
Within-Subject Emphasis
OpenStep emphasizes within-subject comparison rather than normative labeling.
This aligns with many research designs where:
Change over time is the primary outcome
Intervention effects are evaluated longitudinally
Individual response patterns are of interest
Researchers remain free to apply their own normative frameworks or statistical models to exported data.
Adaptable for Research Projects
OpenStep can be adapted for specific research purposes.
Potential adaptations include:
Custom metric definitions
Modified window durations
Experimental threshold parameters
Additional export variables
Project-specific data tagging
Because OpenStep preserves raw data and uses modular metric computation, modifications can be made without compromising the integrity of the underlying signal record.
Collaboration for research-specific adaptations is possible.
Data Integrity and Signal Context
Signal quality metrics are included alongside derived outputs to help researchers interpret:
Sampling continuity
Movement energy thresholds
Confidence of periodic detection
This ensures cadence and other temporal measures are not divorced from signal context.
Confidence metrics describe estimator behavior, not biomechanical correctness.
Intended Role in Research
OpenStep is not presented as a laboratory motion-capture replacement.
It is designed as:
A transparent inertial measurement platform
A reproducible temporal gait analysis tool
A clinician-informed data collection system
It may be particularly suitable for:
Field-based data collection
Intervention studies
Longitudinal tracking
Footwear comparisons
Cadence manipulation research
Collaboration
OpenStep welcomes collaboration with clinicians, universities, and research groups.
If you are exploring a project involving running mechanics, cadence manipulation, wearable sensors, or field-based gait monitoring, please reach out.
OpenStep was built by a clinician who understands both practical assessment and methodological clarity.
Research partnerships are encouraged.