# Multi-Study Integer Programming Methods for Human Voltammery

> **NIH NIH F31** · HARVARD UNIVERSITY D/B/A HARVARD SCHOOL OF PUBLIC HEALTH · 2020 · $37,235

## Abstract

Project Summary/Abstract
 The development of treatments for addiction requires the characterization of neural mechanisms underlying
reward. Studying reward in humans requires assays that can detect changes in neurotransmitter levels with high
chemical specificity. Recently, fast-scan cyclic voltammetry (FSCV) has been implemented in humans to
measure dopamine with high temporal and spatial resolution. This technological achievement was enabled in
large part through the novel application of machine learning methods. FSCV relies on statistical tools since FSCV
records an electrochemical response which must be converted into concentration estimates via a statistical
model. The validity of the scientific conclusions from human FSCV studies therefore depends heavily on the
reliability of these statistical models to generate accurate dopamine concentration estimates.
 In human FSCV, models are fit on in vitro training sets as making in vivo training sets in humans is infeasible.
Producing accurate estimates thus requires that models trained on in vitro training sets generalize to in vivo brain
recordings. Combining data from multiple training sets is the standard approach human FSCV researchers have
employed to improve model generalizability. This proposal extends work that shows that multi-study machine
learning methods improve dopamine concentration estimates by combining training sets from different electrodes
such that the resulting average signal (“cyclic voltammogram” or CV) is similar to the average CV of the electrode
used in the brain. However, this approach relies on random resampling. This is problematic because the
randomness limits the extent to which estimate accuracy can be improved and the slow speed of the resampling
approach precludes the generation of estimates during data collection, which is critical to experiment success.
 This proposal details the development of methods that leverage mixed integer programming to optimally
generate training sets that combine data from multiple electrodes. By generating training sets that are specifically
tailored to the electrode used for brain measurements, one can vastly improve dopamine concentration estimate
accuracy. The speed of the integer programming methods will enable the use of this approach during data
collection. This work will include validation of the methods on in vitro data as well as on data from published in
vivo and slice experiments in rodents. By applying methods to published optogenetic experiments, one can
compare estimates from the proposed methods and from standard methods. The asymptotic properties of the
proposed methods will be characterized analytically assuming a linear mixed effects model and empirically
through application of the methods to data simulated under this model.
 This work will be conducted at the highly collaborative and innovative Harvard School of Public Health. The
fellowship will support growth in statistical, computing and collaborative skills, and...

## Key facts

- **NIH application ID:** 10067624
- **Project number:** 1F31DA052153-01
- **Recipient organization:** HARVARD UNIVERSITY D/B/A HARVARD SCHOOL OF PUBLIC HEALTH
- **Principal Investigator:** Gabriel Loewinger
- **Activity code:** F31 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $37,235
- **Award type:** 1
- **Project period:** 2020-08-01 → 2022-07-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10067624

## Citation

> US National Institutes of Health, RePORTER application 10067624, Multi-Study Integer Programming Methods for Human Voltammery (1F31DA052153-01). Retrieved via AI Analytics 2026-05-23 from https://api.ai-analytics.org/grant/nih/10067624. Licensed CC0.

---

*[NIH grants dataset](/datasets/nih-grants) · CC0 1.0*
