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<article xmlns:xlink="http://www.w3.org/1999/xlink">
  <front>
    <journal-meta />
    <article-meta>
      <title-group>
        <article-title>Diagnostic and Therapeutic Model for Real Time Management of Diabetes</article-title>
      </title-group>
      <contrib-group>
        <contrib contrib-type="author">
          <string-name>CCS Concepts</string-name>
          <xref ref-type="aff" rid="aff0">0</xref>
          <xref ref-type="aff" rid="aff1">1</xref>
          <xref ref-type="aff" rid="aff2">2</xref>
        </contrib>
        <aff id="aff0">
          <label>0</label>
          <institution>A. E. Babalola Department of Computer Science, Federal University of Technology</institution>
          ,
          <addr-line>Akure</addr-line>
          ,
          <country country="NG">Nigeria</country>
        </aff>
        <aff id="aff1">
          <label>1</label>
          <institution>B. A. Ojokoh Department of Computer Science, Federal University of Technology</institution>
          ,
          <addr-line>Akure</addr-line>
          ,
          <country country="NG">Nigeria</country>
        </aff>
        <aff id="aff2">
          <label>2</label>
          <institution>O. M. Omisore Institute of Biomedical &amp; Health Engineering Shenzhen Institutes of Advanced Technology, Chinese Acad. of Science</institution>
          ,
          <addr-line>Shenzhen</addr-line>
          ,
          <country country="CN">China</country>
        </aff>
      </contrib-group>
      <pub-date>
        <year>2016</year>
      </pub-date>
      <fpage>7</fpage>
      <lpage>9</lpage>
      <abstract>
        <p>Diabetes is a major health problem inherent to people at all age groups in developing countries. Conventionally, diagnosis of this condition was based on blood sugar level however, its effect can be traced from other symptoms such as Body Mass Index, and Blood Pressure. This paper presents a decision support model that can be used by diabetic patients and medical practitioners for diagnosis and therapy of diabetes. Fuzzy Logic was adopted for diagnosing pre-diabetic and diabetic patients' data from Obafemi Awolowo University Teaching Hospital Complex, Ile-Ife, OsunState, Nigeria. Therapy is provided as personalized diet recommendation using person correlation coefficient and users' preferences. System evaluation shows adorable performance on both operations. • Information systems ➝Information retrieval ➝Retrieval tasks and goals ➝ Recommender systems</p>
      </abstract>
    </article-meta>
  </front>
  <body>
    <sec id="sec-1">
      <title>INTRODUCTION</title>
      <p>
        As mechanization, urbanization, globalization, financial and
social developments led to richer and better life in human daily
affairs, modifications and alterations in diets have brought about
greater chances of developing certain diseases (FAO, 2013). Food
choice selection has immense effect on health as hale diets help
sustain balanced body weight, enhanced growth, and boost immune
system thereby promoting good mental function for daily activities.
Medical research has shown that healthy foods strengthens the
immune system thereby presenting people a greater chance of
countering free radicals and warding off diseases[
        <xref ref-type="bibr" rid="ref1">1</xref>
        ]. Simply,
healthy diets are dietary taken to develop and repair body cells and
tissues for body effective function. Contrarily, poor dietary lifestyle
is a key contributor to development of chronic diseases such as
obesity, diabetes, and cardiovascular diseases [
        <xref ref-type="bibr" rid="ref2">2</xref>
        ].
      </p>
      <p>
        In the world today, millions of people suffer from poor health
conditions as a result of inappropriate diets [
        <xref ref-type="bibr" rid="ref3">3</xref>
        ]. For instance
obesity, which has potentials of causing more severe problems, has
being a popular health condition around the world. In a finding by
      </p>
      <p>
        Sharma &amp; Majumdar, 68% of women between 21 and 52 years live
with obesity [
        <xref ref-type="bibr" rid="ref4">4</xref>
        ]. Obesity occurs when excess fat accumulates in
body thus reduces life expectancy. In conventional medicine,
obesity is not regarded as chronic disease but it leads to serious
health conditions like diabetes mellitus, cardiovascular diseases
(CVD), which have high mortality rates [
        <xref ref-type="bibr" rid="ref5">5</xref>
        ].
      </p>
      <p>
        The adoption of Information Technology in modern societies has
experienced a shift of paradigm in health condition management.
Most people consume foods without considering their health state
either because they were not properly guided or due to
unavailability of medical experts. Medical procedures have been
supported by technology advancement to minimize the rapid
growth of chronic diseases like diabetes [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ]. Moreover,
recommender system (RS) assumes information from beneficiary
or his closer neighborhood to give suggestions for making optimal
decision while faced with different choices [
        <xref ref-type="bibr" rid="ref7">7</xref>
        ].
      </p>
      <p>
        Recent developments in different fields such as Health and
Commerce RS have adopted the development of expert systems to
support their business logics [8]. Such advancement could play a
major role in disease control by providing accurate and reliable
diagnosis results, acknowledgement of risk status. The central
problems aim is building artificial life, reasoning and
programming, knowledge representation, and understanding
cognitives of natural language with adoption of Artificial
Intelligence (AI) in machines. For instance, Ali &amp; Mehdi [9]
applied fuzzy concept to reduce risks associated with conventional
practices in health diagnosis. AI techniques were mostly applied in
diagnosis of cardiovascular, parasitic, and viral related diseases
[
        <xref ref-type="bibr" rid="ref10">10</xref>
        ] however, obesity and diabetics has recently received some
recognition [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ][
        <xref ref-type="bibr" rid="ref11">11</xref>
        ][
        <xref ref-type="bibr" rid="ref12">12</xref>
        ]. In Babalola et.al. [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ], real time diagnosis
system was proposed to detect severity of diabetes in patients.
In e-Health, RSs can be utilized for therapy by predicting or
recommending types of food people can take to preclude them
from certain ailments. As a result, an intelligent meal planning
system was proposed in [
        <xref ref-type="bibr" rid="ref13">13</xref>
        ] and similarly, Napat et al. [
        <xref ref-type="bibr" rid="ref14">14</xref>
        ]
presented a knowledge-based approach for personalized food
recommender. Furthermore, clustering analysis is adopted in
Phanich et. al [
        <xref ref-type="bibr" rid="ref15">15</xref>
        ] to recommend food items for diabetic patients.
Hsu et al. [
        <xref ref-type="bibr" rid="ref16">16</xref>
        ] also developed an online system that searches food
composition databases, calculates dietary intake, and provides the
guidance for decision making in nutrition counseling.
      </p>
      <p>
        Despite the adoption of RS for diet related diagnosis and
preventive-therapy, suitable food selection are still difficult for
some people especially in the presence of many factors. Hence this
work extends the model in [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ] with recommender component that
predicts type and quantity of foods that can be taken for effective
management of diabetes. The remaining parts of this paper is
organized that Section 2 presents review of related works; Section
3 presents the diagnostic RS for managing pre-diabetic and diabetic
patients. Experimentation, Results and evaluation of experiments
carried out are presented in Section 4. Lastly, conclusion and
futures works are presented in Section 5.
      </p>
    </sec>
    <sec id="sec-2">
      <title>2. SYSTEM DESIGN AND ANALYSIS</title>
      <p>
        Architecture of the model for real time management of diabetes is
presented in Fig. 1. The baseline model was described in [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ] though
without enhancement for recommendation thus, this model shows
capability of diagnosis of diabetes and food recommendation base
on patient health data.
      </p>
    </sec>
    <sec id="sec-3">
      <title>2.1 Fuzzy-Based Diagnosis</title>
      <p>
        The system architecture has four major components working
interconnectedly to perform diagnosis of pre-diabetic and diabetic
patients and recommendation of food items base on patient
diabetic or obesity level. The diagnostic part combines efforts from
Graphical User Interface, Knowledge base, and Fuzzy Logic
components to determine patients’ health status. Recommender
component has roles to play when a user demands
recommendation anonymously or as a basis for food therapy. A
detailed functions of the first three components that is: User
Interface, Knowledge Base and Fuzzy Logic; were detailed in [
        <xref ref-type="bibr" rid="ref6">6</xref>
        ].
In a nutshell, the functions are:
a. Patients’ data were collected and stored for processing
through graphical user interface in an efficient manner;
b. Raw and processed data are stored in the database component
of knowledge base together with if-then rules upon which
fuzzy logic component operates; and
c. Fuzzy inference component operates on user’s data for
purpose of diabetic diagnosis. Fuzzification and
defuzzification were applied to handle imprecise and
uncertain information innate in patients’ data.
      </p>
      <p>The defuzzification process translates output from fuzzy
inference engine to crisp values through computationally simple
and accurate technique: Centroid of Gravity (CoG). Given as an
aggregated membership function with as center of the
membership function, the output value is determined as with Eq1.
∑
∑</p>
    </sec>
    <sec id="sec-4">
      <title>2.2 Food Recommendation</title>
      <p>All patients whose data are passed for diagnosis are lamed
prediabetic. However, diagnostic component of the model is used
determine the true health status of patients. People could be lamed
diabetic if their body weight signifies being overweighed or obese.
To determine if a patient is obese, the Body Mass Index value is
obtained using Eq 2.
where w(kg) is the patient’s weight in kilogram, and h2(cm2) is
height in centimeter.</p>
      <p>Then patient is classified as being underweight, normal,
overweight, or obese base on categorization in Eq 3.</p>
      <p>{</p>
      <p>Therapeutic action is triggered if a person classified obese is also
confirmed diabetic by the diagnostic processes, or request is
voluntarily made for food recommendation.</p>
      <sec id="sec-4-1">
        <title>1) Recommendation for Diabetic Personality</title>
        <p>
          In cases where lamed patients are diagnosed diabetic, the
recommendation component uses Broca Index to compute ideal
body weight (bw) of the patient. Broca Index is an ideal body mass
measurement developed for standard weight computation [
          <xref ref-type="bibr" rid="ref17">17</xref>
          ]. The
index value is obtained as in Eq 4.
        </p>
        <p>
          Broca Index value is used to determine the activity level (AL) of a
patient. Activity level of a patient has intrinsic characteristic with
total calorie of energy such patient requires daily, and it is
determined by combining BMI value of patient with his/her work
category. Classification of works done by people based on expected
energy to achieve optimal result is reported in [
          <xref ref-type="bibr" rid="ref18">18</xref>
          ]. This research
combines classification advice by authors with BMI values in
categorizing patients to AL groups, as presented in Table 1.
Therefore, a preferred three-square meal ration is applied base on
case study disease. In the case of diabetes, 3:4:3 ration is applied for
Breakfast, Lunch, and Dinner respectively. The basic goal is to eat
healthy foods in reasonable proportions alongside time of the day
since diabetic patients are keenly monitored to avoid blood sugar
spikes. Since more energy is required in afternoon period, it is
important such patients consume more calories in the afternoon
rather than morning or night. Summarily, rations needed for
consumption by diabetic patients is given as Eq. 5
where kcal is the kilocalorie for Period of a day, is ration for , and
AL is activity level category of patient.
        </p>
        <p>
          The periodic kilocalorie intake is further shared to three macro food
nutrients: carbohydrate, protein and fat. Sharing percentages of
macro food nutrients strongly depend on diabetic level of patient.
According to American Diabetes Association [
          <xref ref-type="bibr" rid="ref19">19</xref>
          ], low
carbohydrate meals are good to keep blood glucose levels in
diabetic patients within normal range, and offer tasty meals that
satisfy hunger. Such lowness inversely depends on diabetes level of
the patient. Relationships between diabetes level and percentages of
macronutrients in diabetic meals are given in Table 2. Percentage
ratios were computed and displayed as users’ guide. The output is a
seven-day food plan recommendation based on food roster
prestored in the database. Dynamism in recommendation depends on
history, allergic foods, favorite foods, and diabetic health status of
patients.
The model present patients with substitutes for allergic foods using
correlation measure, this is detailed in voluntarily request
recommendation. Finally, for conveniences, food items are
converted into grams on display to enable patients prepare their
meals correctly and independent of nutritionists. Conversions of the
macro nutrients adopted from [
          <xref ref-type="bibr" rid="ref6">6</xref>
          ] is presented in Eq 6.
        </p>
        <p>Aside these macro nutrients, traces from other food nutrients such
as vitamins, water are also considered for personalization.</p>
      </sec>
      <sec id="sec-4-2">
        <title>2) Recommendation on Voluntarily Request.</title>
        <p>In first part of the recommendation module, the model exhibits a
curative mechanism for pre-diabetic patients who were registered
with the system and diagnosed. On another side, the model has a
preventive component that predicts food items for users who were
never lamed pre-diabetic nor diagnosed by the system. This
recommendation actuates on voluntary request by anonymous user
using Pearson Correlation Coefficient for similarities measures.
Pearson Correlation Coefficient (PCC) measures distance between
items that are linearly related. Unlike Euclidean distance measure,
PCC observes correlations of variables in range of -1 to +1, hence
accuracy of score is maintained when data is not normalized. In any
voluntary recommendation request, users are obliged to specify a
set of food items preferable to them as a meal. PCC is employed to
retrieve groups of food-item combination(s) that are found closest
to user’s specification. For instance if a user specifies an
itemset and where X,Y or Z are
food items in a user’s choice, and is a major nutrient in food-item
X, then groups of food items are recommended from the database
following correlation procedures in Eq. 7.</p>
        <p>√∑
∑</p>
        <p>̅
̅ √∑
̅
̅
. . . . . . . . . . . . (7)
where ̅ and ̅ are mean values of nutrients
and
with confidence
value such that . Two set of food are correlated if
they have a high confidence value.</p>
      </sec>
    </sec>
    <sec id="sec-5">
      <title>3. EXPERIMENTS AND RESULTS</title>
      <p>This section reports details of experiment carried out to validate the
proposed model. Details of the dataset used and results are detailed
in this part. Results from some related works were taken as basis for
performance measure.</p>
    </sec>
    <sec id="sec-6">
      <title>3.1 Dataset</title>
      <p>The dataset used were sourced from multiple agents including
nutritionists, diet related publications and websites. Since diabetic
patients can only feed on certain foods, we design a template made
from foods mostly consumed by diabetic people only. The template
is a flexible seven-day calendric roster shaped with the help of
nutritionists.</p>
      <p>Guided by nutritionists, we established some relationships between
diabetes level and amount of kilocalories patients can consume
from macro nutrients in foods to provide diet personalization for
diabetic patients. Finally, a list of 70 food items consumable by
diabetic patients were crawled from diet related websites, and
analyzed. The macro- and micro- features were elicited and stored
in the database schematically as shown in Table 3.</p>
      <p>These features offer cognitive help in personalized and anonymized
food items recommendation. Food combination strictly follows a
model base on nature combination where nature of food items is
assumedly derived from their appearance. Nature can be any of the
options in Table 4.</p>
    </sec>
    <sec id="sec-7">
      <title>3.2 Experimental Result</title>
      <p>Data of thirty pre-diabetic patients from Obafemi Awolowo
University Teaching Hospitals (OAUTHC), Ile-Ife, Osun State,
Nigeria was fed into the system for purpose of diagnosis and food
therapy.
This is to validate preciseness of personalization in
recommendation made by the proposed system. All program codes
are implemented with HTML, PHP, JavaScript and SQL. The
HTML tags and Java scripts are employed to structure the outlook
and behavior of the web pages respectively. At each session,
anthropometric data and vitals of patients are captured with web
interface displayed as Fig. 2. Following the diagnosis processes
evaluated by the Fuzzy-Based component, users’ Diet
Personalization and Recommendation is operated on at actual
modules.</p>
      <p>Upon successful fuzzification process, the diagnosis result for each
patient is displayed as in Fig. 3. The interface has two parts: the first
shows result of fuzzy operation on left side, and a summary panel
on the right side. The later displays diagnosis status and level of
severity of diabetes in patients. Also on the later side are controls
for personalizing foods to be recommended for patients, alongside
with patient diet history. Data of the 30 subjects and respective
diagnosis are given in Table 5. Diagnosis by fuzzy component
shows Patient 013 is severely diabetic, hence appropriate eating
formula to be selected is 3:4:3.</p>
      <p>To recommend personalized food items, “Continue to Prediction”
button in Fig. 3 is clicked. Once the procedure is triggered, the
recommender acquires diagnosis result and
selected eating formula as essential information needed to fine-tune
the pre-designed seven days template for food personalization and
recommendation.</p>
    </sec>
    <sec id="sec-8">
      <title>3.3 Diet Personalization and Recommendation</title>
      <p>In this phase two procedures carried out seamlessly are
personalization and recommendation of food items for users.
During personalization, ideal body weight of a patient is used to
determine the total Energy Required Daily (ERD) in kilocalories.
This includes certain Proportion of Breakfast, Lunch and Dinner
(PoB, PoL, PoD) of food items with proportions depending on
selected eating formula, and pre-configured percentage of macro
food nutrients for different levels of diabetes as explained in Table
2 of Section 3.To compute ideal body weight of a patient, Broca
Index estimated from patient’s height is utilized. Then, the total
amount of food to be consumed per day is computed following
procedures in Section 3.</p>
      <p>Patient 013, in his session with the system, supplied values in Fig. 2
and has severe diabetic as diagnosis result. The patient claims a
height value of 1.50 hence a Broca Index of 50 was computed and
thereby, a total of 1750 kcal is to be consumed daily. Still on
personalization, selected eating formula was applied to determine
portions for breakfast, lunch and dinner as given in Table 6.
Furthermore, the three-square meals were subdivided by major
food nutrients: carbohydrate, protein, and fat; hence we applied
daily proportion for each of breakfast, lunch, and dinner to a
suitable diet configuration base on patient’s diabetic severity to
compute appropriate proportion of macro food nutrient as in Table
7.</p>
      <p>Finally, gram equivalents of items in food template were
determined as personalized diet recommendation. Diets
recommended by the model are presented to users in a single
interface with ranking done based on users’ favorites. This results
in having foods that a user likes at top of the list while allergic
ones come last in the auto-adjusted 7-day plan.</p>
      <p>Pearson correlation explained in Section 3 was used to pair food
items for meals recommended in any seven-day plan. The main
role of Pearson coefficient is to generate balanced diet meal by
observing correlation among food items in the database. In
combination like Amala + Okra + Mackerel Fish + Orange, each
food item are connected with
specific alternatives across different food items of the same Nature
(See Table 4), and compute correlation score for each combination.
For instance, coefficient algorithm combines each of Amala, Eba,
Fufu, Pounded Yam, Wheat, and Semolina; with alternative items
in other food natures to check correlation.</p>
      <p>As a result fixed content of food roster template are updated with
meal combinations that has best correlation. This is a direct
function of Confidence Value (CV) varying between 0-1. However,
only combinations with were considered for
recommendation as in Table 8.
:
̂ ̂
√
(√∑
)
where ̂ and ̂ are alternative food items and are jth
respective values of their nutrients.</p>
      <p>In Fig. 4, Patient 013 indicates allergy to Pap, amongst other
recommended food items, a sample of food items filtered out as
substitute with the same nature is shown in Table 9. Substitutes are
arranged in ascending order of their distance measure to Pap as
Agidi, Quaker Oats, and Corn Flakes.
Finally, the recommendation on voluntarily request only
requires the Pearson correlation between the food items to
locate a set of foods that are similar to user’ selection. Previous
works emphasized this in different RS [26][27].</p>
    </sec>
    <sec id="sec-9">
      <title>3.4 System Evaluation</title>
      <p>Evaluation is necessary for validation of application systems in
general, but effectiveness is a measure of focus in personalizing
diet recommendation systems. Since the system handles two
important aspects of life, evaluation is separated as diagnosis error
and user’s preference on recommendation features. For diagnosis,
we checked the sensitivity of underlying mathematical models to
observe how it responds to inputs. This was done by comparing
automated diagnosis results with conventional human approach,
hence utilized Eq. (9) to compute the ratio of properly diagnosed
patients (True Positive value) to total number of patients diagnosed
with the system.
Therefore, results obtained from manual approach were compared
with observations by the proposed system as presented in Table 10.
On comparing the diagnostic potential of the two approaches, the
proposed system demonstrates a sensitivity value of 73.3%, hence
the model’s response to changes in input values is similar to
human experts. We also evaluated effects of personalization in
recommended diets. A routine call was included for dieticians to
communicate their feedback about performance of the proposed
system with regards to quality of recommended diets and patient
personalization levels. This is to ensure reliability of parameters
used in personalization and recommendation of food items. As
shown in Fig. 4, five factors were used to observe users’
preference, each could attain one of five Likert-scale values:
5Excellent, 4-Very Good, 3-Average, 2-Fair, and 1-Poor.
This evaluation part was based on view and responses of 10
randomly selected experts on diagnosis and therapy of diabetes at
Obafemi Awolowo University Teaching Hospitals (OAUTHC),
Ile-Ife, Osun State, Nigeria. Assessments done by experts using
data of thirty pre-diabetic patients is summarized in Table 11.</p>
      <p>Quantification of the summary is a better way to describe user’s
preference on recommendation features, hence we had to compute
a central value for rating purpose. In this evaluation, we assumed
the parameters have equal weights, however weights of Likert
scale values differs as in Fig. 4. Therefore, the system has an
average rating of 74.8%, that is, 187 points out of 250 maximum
points.</p>
    </sec>
    <sec id="sec-10">
      <title>4. CONCLUSION</title>
      <p>Diabetes Mellitus is a serious health condition that causes
malabsorption of foods to be used as energy in human body. It is
costly to manage and as a result, appears as a major factor for high
mortality rates in developing countries. Importantly, preventive
measures against primary cause, which sometimes is malnutrition
or obesity, aid healthy diet lifestyle, improve blood pressure,
control blood sugar level and decrease the risk of health
complications. This paper presents a scalable computer aided
model for management of diabetes. Fuzzy logic is proposed for
diagnosing diabetic levels in patients, and a personalized
recommendation approached towards maintaining balanced
macronutrients needed by patients just after diagnosis.
Diagnosis stage of the proposed system is basically to determine if
a lamed patient is diabetic, in other words to determine the level of
diabetes. However, the major proposal in this study is
personalization of recommended foods. Recommendation initially
emulates a seven-day template which serves as a basic food roster,
and subsequently modified to suit different patients. Modification
is based on diagnosis results of patients hence reaching a goal of
personalization. The work done is a typical personalization in
which foods recommended varies directly with total ERD by
patients. Hence, the recommended seven-day food plan for each
patient is filtered based on the diet history and allergies of such
patients. Different sets of food items are selected and passed for
ranking at each session.</p>
      <p>The system has promising diagnosis accuracy and reliable average
point for recommendation. Broca index adopted in this research is
more efficient at recommending ERD for users, however, might
not be the best for very severe diabetic patients, because there is
great need to reduce their carbohydrate intake. Basically, accuracy
of the system could be better if calorie recommendation method is
adopted. Hence, future work scan adopt switching to Harris
Benedict method for recommending daily calorie intake.
Furthermore, it is good to note that Harris Benedict method also
has limitation of over estimating calorie intake hence, only suitable
for patients with very severe diabetes.</p>
    </sec>
    <sec id="sec-11">
      <title>5. ACKNOWLEDGMENT</title>
      <p>Great thanks to Dietician Ogundana T. and other staff at
Department of Dietetics, OAUTHC, Ile-Ife, Nigeria, for their
assistance during data collection and interpretation, rule-base
formulation, and model evaluation.
Based on User Information.Fourth International Conference
onComputer Sciences and Convergence Information
Technology, pp. 516-518.</p>
    </sec>
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