# Designing the next generation of highly selective sorbent materials for remediation of target inorganic contaminants in aqueous systems

> **NIH NIH P42** · HARVARD UNIVERSITY D/B/A HARVARD SCHOOL OF PUBLIC HEALTH · 2020 · $225,566

## Abstract

PROJECT SUMMARY/ ABSTRACT
The effective removal of metal contaminants from drinking water at Superfund sites is critical to protect human
health. However, this process is challenged by the presence of naturally co-occurring, otherwise health-benign
ions. Such ions compete for surface adsorption sites in common treatment processes, such as adsorbents,
intended to remove the target metal pollutants. Further, these competitors frequently occur at comparable or
higher concentrations, exhibit analogous chemical structures, and demonstrate similar or superior affinities for
sorption sites. Conventional adsorbent technologies are top-down, wherein surface adsorption sites are created
using or mimicking natural materials. Yet, recent advances in polymer- and nano-science allow for
unprecedented bottom-up capabilities to thermodynamically model, characterize, and controllably synthesize
adsorbents. Here, we will exploit chemical behavioral differences such as polarity, charge distribution, size, and
hydrophobicity between target oxoanion metal pollutants and naturally occurring competing ions to generate
highly selective and tunable polymeric and nano-surfaces. In conjunction with developing oxoanion mass
transport models within treatment processes, these new bottom-up design strategies will be applied to develop
macro-scale sorbents with improved efficiency and effectiveness over current commercial top-down designed
sorbents. We will realize our innovative bottom-up approach by iteratively synthesizing, modeling, and scaling
highly selective sorbents from two platforms offering solutions at multiple scales and under varying drinking water
system conditions (e.g., point-of-use (POU) at individuals household tap vs. point-of-entry (POE) community-
scale applications): 1) utilize biopolymers with various transition metals crosslinkers (TMC) for point of entry
(POE) applications and 2) controlling size, surface area, morphology, and crystallinity of nano-metal oxides
(NMOs) that are integrated into porous electrospun polymer fibers for single-use POU applications. In (1),
resultant crosslinking complexes can exclude competitive ions electrostatically and/or sterically. In (2), the
presence of certain high-energy crystal facets and the coordination of terminal surface groups create surface
chemistry that is favorable toward the sorption of specific target contaminants such that a blend of different
NMOs within a fiber could be used to target specific mixtures of metals. Our preliminary results demonstrate the
potential of both systems to realize selectivity of Superfund-relevant metals that cannot be achieved by current
sorbents. Thus, we propose to revolutionize the approach to removing mixed metal pollutants from Superfund
site drinking water through processes that can simultaneously reduce operational costs, hazardous waste
generation, and drinking water compliance violations while improving the protection of public health.

## Key facts

- **NIH application ID:** 9840758
- **Project number:** 1P42ES030990-01
- **Recipient organization:** HARVARD UNIVERSITY D/B/A HARVARD SCHOOL OF PUBLIC HEALTH
- **Principal Investigator:** Julie Zimmerman
- **Activity code:** P42 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $225,566
- **Award type:** 1
- **Project period:** — → —

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/9840758

## Citation

> US National Institutes of Health, RePORTER application 9840758, Designing the next generation of highly selective sorbent materials for remediation of target inorganic contaminants in aqueous systems (1P42ES030990-01). Retrieved via AI Analytics 2026-05-21 from https://api.ai-analytics.org/grant/nih/9840758. Licensed CC0.

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