Macular pigment optical density and measurement technology based on artificial intelligence: a narrative review
MPOD and AI-based measurement
·Review Article·
Macular pigment optical density and measurement
technology based on artificial intelligence: a narrative
review
Yu-Xuan Yuan1, Hong-Yun Wu2, Wen-Jin Yuan3, Yi-Lin Zhong2, Zhe Xu2
1
School of Information Science and Engineering, Lanzhou
University, Lanzhou 730000, Gansu Province, China
2
Ophthalmology Department, Ganzhou People’s Hospital,
Ganzhou 341000, Jiangxi Province, China
3
Department of Cardiology, Ganzhou People’s Hospital,
Ganzhou 341000, Jiangxi Province, China
Co-first Authors: Yu-Xuan Yuan and Hong-Yun Wu
C o r re s p o n d e n c e t o : H o n g - Yu n Wu a n d Z h e X u .
Ophthalmology Department, Ganzhou People’s Hospital,
Ganzhou 341000, Jiangxi Province, China. wuhy77@126.
com;
Received: 2024-11-23
Accepted: 2025-01-21
Abstract
● Macular pigment (MP) is a crucial pigment in the macular
region. It plays an important role in filtering blue light, and
exhibits anti-inflammatory and antioxidant properties.
Macular pigment optical density (MPOD) is a key indicator
for assessing the density of MP in the macular area and is
closely associated with eye diseases, including age-related
macular degeneration, diabetic retinopathy, and glaucoma.
This review aims to explore the clinical significance of MPOD
and its research value in ophthalmology and other medical
fields. It summarizes the current MPOD measurement
techniques, categorizing them into two main types (in vivo
and in vitro), and discusses their respective advantages and
limitations. Additionally, given the advancements in artificial
intelligence (AI) and deep-learning technologies that
offer new opportunities for improving MPOD assessment,
this review analyzes the significant potential and future
prospects of AI-based fundus image analysis in MPOD
measurement. The goal of AI-based analysis is to provide
faster and more accurate detection methods, thereby
promoting further research and new clinical applications of
MPOD in the field of ophthalmology.
● KEYWORDS: macular pigment optical density; clinical
application; measurement technology; artificial intelligence
DOI:10.18240/ijo.2025.06.23
Citation: Yuan YX, Wu HY, Yuan WJ, Zhong YL, Xu Z. Macular
1152
pigment optical density and measurement technology based
on artificial intelligence: a narrative review. Int J Ophthalmol
2025;18(6):1152-1162
INTRODUCTION
he macular pigment (MP) is primarily concentrated
in the macular region of the retina and is composed
of three carotenoids, namely lutein, zeaxanthin, and mesozeaxanthin[1-2]. The density of MP is typically represented
by macular pigment optical density (MPOD)[2-3]. It has been
demonstrated that MP plays a role in filtering blue light,
reducing inflammation, and combating oxidative stress[1,4-8].
MPOD is closely associated with the onset and progression
of several ocular diseases, including age-related macular
degeneration (AMD), diabetic retinopathy (DR), and
glaucoma, which highlights its broad research and clinical
application value[3,9-10]. Methods for measuring MPOD can
be categorized in vivo and in vitro techniques[10-11]. In vitro
methods include microdensitometry and high-performance
liquid chromatography (HPLC)[11]. In vivo methods can be
further divided into subjective and objective techniques[11-12].
Subjective methods include heterochromatic flicker photometry
(HFP), color matching, and minimum motion photometry,
while objective methods encompass fundus reflectometry
(FR), fundus autofluorescence (FAF), resonance Raman
spectroscopy (RRS), and visual evoked potential (VEP) based
on electrophysiology[3,13-15]. Among these techniques, HFP is
regarded as the standard method for measuring MPOD due to
its extensive clinical application and reliability[15]. However,
all methods have advantages, disadvantages, and limitations,
making it challenging for MPOD to fully realize its potential in
the prevention and treatment of ocular diseases.
In recent years, with the rapid advancement in use of deeplearning algorithms for medical image analysis, artificial
intelligence-based fundus image recognition technology
has created new possibilities for MPOD measurement[16].
This approach not only promises to enhance measurement
accuracy and efficiency, but also overcome certain limitations
of traditional techniques. The present study investigates the
relationship between MPOD and various ocular diseases, as
T
Int J Ophthalmol, Vol. 18, No. 6, Jun. 18, 2025
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well as its value in ophthalmology and other medical research
fields. Additionally, this study emphasizes the importance
of MPOD measurement, evaluates the limitations of current
techniques, and explores the potential of artificial intelligencebased fundus image MPOD measurement, with the hope of
providing a faster and more accurate detection method for
the clinical application and further development of MPOD
research.
MPOD AND ITS APPLICATIONS
Macular Pigment and Macular Pigment Optical Density
The macula, located in the central optical region of the
posterior pole of the retina, is a vital area for maintaining
visual functions (e.g., fine vision and color perception), and
appears yellow due to its high concentration of MP[2]. As the
primary functional component of the macular region, MP is
concentrated in the Henle fiber layer, the inner nuclear layer
of the retina, the axons of cone cells, and the outer segments
of rod cells[4-6], and is mainly composed of three lutein-related
carotenoids, namely lutein, zeaxanthin, and meso-zeaxanthin[1].
MP helps maintain the normal function and morphology of
the macula and protect ocular health. Moreover, MP act as a
blue-light filter by absorbing 40%-90% of high-energy shortwavelength blue light[5,7], reducing oxidative damage from
blue light within the eye and thereby protecting the retina from
photochemical damage[1]. MP also quenches singlet oxygen
and related reactive oxygen species to reduce oxidative stressinduced damage to photoreceptor cells, thereby preserving
healthy vision[4,6,8]. Additionally, it has been reported that MP
can inhibit ocular inflammation by reducing inflammatory
factors and regulating the expression of related genes [7].
Therefore, it has been suggested that supplementing with
lutein, zeaxanthin, and other antioxidant blends may help
improve eye health[17-18].
MP density is expressed as MPOD, which linearly correlates
with the total amount of MP, i.e., the product of its
concentration, the length of the light transmission path, and the
area[2,19]. MPOD is measured in optical density units, ranging
from 0 to 1, with one optical density unit corresponding to
approximately 0.025 nanograms of MP covering one square
millimeter of retinal tissue[7,20]. In addition to MPOD, serum
lutein levels, and dietary intake of lutein are also commonly
used as indicators of MP levels. However, these indicators
do not fully account for potential confounding factors in the
processes of lutein digestion, (...truncated)