Looking for a similar answer, essay, or assessment help services?

Simply fill out the order form with your paper’s instructions in a few easy steps. This quick process ensures you’ll be matched with an expert writer who
Can meet your papers' specific grading rubric needs. Find the best write my essay assistance for your assignments- Affordable, plagiarism-free, and on time!

Posted: March 4th, 2025

Brain Tumor Classification via Statistical Features and Back-Propagation Neural Network

Brain Tumor Classification via Statistical Features and Back-Propagation Neural Network

Abstract— Classification of brain tumor is the heart of the computer-aided diagnosis (CAD) system designed to aid the radiologist in the diagnosis of such tumors using Magnetic Resonance Image (MRI). In this paper, we present a framework for classification of brain tumors in MRI images that combines statistical features and neural network algorithms. This algorithm uses region of interest (ROI), i.e. the tumor segment that is identified either manually by the technician/radiologist or by using any of the ROI segmentation techniques. We focus on feature selection by using a combination of the 2D Discrete Wavelet Transform (DWT) and 2D Gabor filter techniques. We create the features set using a complete set of the transform domain statistical features. For classification, back propagation neural network classifier has been selected to test the features selection impact. To do so, we used a large dataset consisting of 3,064 slices of T1-weighted MRI images with three types of brain tumors, Meningioma, Glioma, and Pituitary tumor. We obtained a total accuracy of 91.9 %, and specificity of 96 %, 96.29 %, and 95.66 % for Meningioma, Glioma, and Pituitary tumor respectively. Experimental results validate the effectiveness of the features selection method and indicate that it can compose an effective feature set to be used as a framework that can be combined with other classifications technique to enhance the performance.

What Citation Styles Can You Use for My Essay?

Students often ask, “Can you write my essay in APA or MLA?”—and the answer’s a big yes! Our writers are experts in every style imaginable: APA, MLA, Chicago, Harvard, you name it. Just tell us what you need, and we’ll deliver a perfectly formatted paper that matches your requirements, hassle-free.

Keywords— Brain tumor classification; Gabor filter; Wavelet Transform; statistical features

I.     Introduction

Brain tumors are the most common brain disease that affect the central nervous system (CNS), the brain and spinal cord [1]. During the last two decades, the computer-aided diagnosis system (CAD) has been employed to improve the accuracy of the diagnostic ability of radiologists in detecting, segmenting, and identifying the type of brain tumor [2].

Magnetic Resonance Imaging (MRI) is the most common modality that is exploited to diagnose abnormal tissue growth in the brain. Usually, radiologists depend on manual diagnosis to identify brain tumors [3]. In manual diagnosis, the amount of MRI images to be analyzed is large enough to make readings based on visual interpretation expensive, inaccurate, and intensive. In addition; the human eye is sensitive to any changes in the MRI image, this sensitivity may be decreased with the increase in the number of images [4]. Furthermore, manual diagnosis is time consuming [3], and it depends on the subjective decisions of the radiologists which is hard to quantify [5], thus it may lead to misclassification [6]. Radiologists used invasive techniques such as biopsy and spinal tap methods for a brain tumor diagnosis. Both approaches, biopsy and spinal tap, are painful, time consuming, risky, and expensive [7]. Consequently, developing an accurate, robust, practical, and automatic diagnosis system for this purpose is significant and essential to overcome the drawbacks of manual diagnosis and invasive techniques.

Many researchers have proposed different methods to develop a CAD system that can detect or classify abnormal tissues in brain MRI images. Feature extraction is a crucial step in building a capable CAD system [2]. The most widely used techniques for feature extraction are texture features and Discrete Wavelet Transform (DWT). Texture is a pattern that appears in an image frequently and repeatedly [8]. Texture features can be specified by statistical features [9] or Gabor filter [10]. There are two types of statistical features, first order and second order [8]. First order features are extracted from the image histogram [11], while second order features are extracted from Gray Level Co-occurrence Matrix (GLCM), Gray Level Run Length Matrix (GLRM) [8], or Neighborhood Gray Tone Difference Matrix (NGTDM) [12]. Gabor filter is a linear and local filter that is based on the convolution between Gaussian function and cosine function [10]. Texture features based on Gabor filter have been employed to extract the required features for the classification of brain tumor [13]. DWT is a beneficial tool for image analysis since it provides significant information with reduced time [14]. 2-D DWT has been implemented to extract features from brain MRI images for tumor classification [15]. Different classification techniques have been exploited by many authors for identifying tumor types from brain images. The most common used classifiers are neural network and support vector machines (SVM). Neural network was implemented using different architectures like feedforward neural network [6], multilayer perceptron neural network trained with backpropagation algorithm [8], and Probabilistic neural network (PNN) [7]. Support vector machine (SVM) was implemented using three kernels, homogenous polynomial, inhomogeneous polynomial, and Gaussian radial basis function [12], [16]. Other types of classifiers were employed like the ensemble learning method based on AdaBoost classifier [17], neuro-fuzzy classifier [5], dictionary learning and sparse coding [18], and k-nearest neighbor (KNN) [19].

Is It Legal to Use Your Writing Service?

Absolutely, it’s 100% legal! Our service provides sample essays and papers to guide your own work—think of it as a study tool. Used responsibly, it’s a legit way to improve your skills, understand tough topics, and boost your grades, all while staying within academic rules.

In this paper, we propose a classification algorithm for brain MRI images that exploits statistical features extracted from 2-D DWT and 2-D Gabor filter. Combining both techniques (2-D DWT and 2-D Gabor filter) can improve the classification accuracy as compared to using each method separately since it benefits from all the directional information of the input MRI image. This paper is organized as follows; section I is an introduction, section II presents the methodology used in this algorithm, section III shows the results and section IV is the conclusion.

II.    Material and Methodology

Feature extraction is implemented using 2-D DWT, 2-D Gabor filter, and statistical features as illustrated in figure 1. The input image is the tumor region that can be obtained using manual segmentation by radiologists or automatic segmentation. Back-propagation neural network (BPNN) is used for the classification.

Input Image

How Much Does It Cost to Get a Paper Written?

Our pricing starts at $10 per page for undergrad work, $16 for bachelor-level, and $21 for advanced stuff. Urgency and extras like top writers or plagiarism reports tweak the cost—deadlines range from 14 days to 3 hours. Order early for the best rates, and enjoy discounts on big orders: 5% off over $500, 10% over $1,000!

2-D

Gabor Filter

Will My Use of This Service Stay Private?

Yes, totally! We lock down your info with top-notch encryption—your school, friends, no one will know. Every paper’s custom-made to blend with your style, and we check it for originality, so it’s all yours, all discreet.

2-D DWT

Statistical Features

Statistical Features

Do You Use AI to Write Papers?

No way—our papers are 100% human-crafted. Our writers are real pros with degrees, bringing creativity and expertise AI can’t match. Every piece is original, checked for plagiarism, and tailored to your needs by a skilled human, not a machine.

Features Set

BPNN Classifier

Tumor Type

Figure 1: Framework of the proposed system

Why Choose You for Research Papers?

We’re the best because our writers are degree-holding experts—Bachelor’s to Ph.D.—who nail any topic. We obsess over quality, using tools to ensure perfection, and offer free revisions to guarantee you’re thrilled with the result, even on tight deadlines.

A.    Database

The dataset used to train and test our algorithm consists of 3064 brain MRI slices collected from 233 patients with three kinds of brain tumors, Meningioma, Glioma, and Pituitary.

     A picture containing indoor, white, photo

Description generated with high confidence

(a)                            (b)                            (c)

     

Who’s Writing My College Essays?

Our writers are top-tier—university grads, many with Master’s degrees, who’ve passed tough tests to join us. They’re ready for any essay, working with you to hit your deadlines and grading standards with ease and professionalism.

(d)                            (e)                            (f)

Fig. 2: Sample images from database, (a) Meningioma, (b) Glioma, and (c) Pituitary and its tumor region (d), (e), and (f) respectively

The total number of slices for each type of tumor is: 708 slices for Meningioma tumor, 1426 slices for Glioma tumor, and 930 slices for Pituitary tumor [20]. The tumor region was manually segmented by three radiologists. The original slices along with its tumor region are available online from Figshare website [21]. In figure 2, three different MRI images are presented along with its tumor region.

B.    Discrete Wavelet Transform

Wavelet Transform (WT) is a powerful tool that transforms the signal from the time domain into the wavelet domain to analyze the time and frequency contents at the same time [22]. For high frequency signals, Wavelet Transform gives high time resolution and low frequency resolution and for low frequency signals, it gives high frequency resolution and low time resolution. A basis function called “mother wavelet” is scaled and translated to achieve the time and frequency resolution. Wavelet basis function is generated from the mother wavelet as follows [23]:

Are Your Papers Original?

Always! We start from scratch—no copying, no AI—just pure, human-written work with solid research and citations. You can even get a plagiarism report to confirm it’s 95%+ unique, ready for worry-free submission.

ψa,bx=1aψx-ba, a ,b ∈Z  a > 0                   ( SEQ Equation * ARABIC 1)

where

ψx, is the mother wavelet, and (a, b) represent the dilation and translation parameters respectively.

By applying 2-D DWT, the image is decomposed into four subbands labeled LL which represent approximation image, LH, HL and HH that correspond to detail images as shown in figure 3. The approximation and detail coefficients are used for texture features representation. In this algorithm, we implement three levels of 2-D DWT using “symlet4” filter and all the subbands images (LL, LH, HL, and HH) are utilized for feature extraction results in 12 subband images. Combining the approximation and detail coefficient can improve the discrimination ability of the classification algorithm [24].

Can You Match Any Citation Style?

You bet! From APA to IEEE, our writers nail every style with precision. Give us your guidelines, and we’ll craft a paper that fits your academic standards perfectly, no sweat.

Fig. 3: One level filter bank for computation of 2-D DWT,

honis a low pass filter and

h1nis a high pass filter

Can I Update Instructions Mid-Order?

Yep! Use our chat feature to tweak instructions or add details anytime—even after your writer’s started. They’ll adjust on the fly to keep your essay on point.

C.    Gabor Filter

A Gabor filter is a linear filter that is obtained by modulating a sinusoidal wave with a Gaussian function. The frequency and orientation of Gabor filter are similar to the human visual system and it can be used for texture description. The Gabor function is a useful tool in computer vision and image processing, especially for texture analysis, due to its optimal localization properties in both the spatial and frequency domain [25]. 2-D Gabor filter is defined as [10]:

Gx,y,λ,θ, ϕ,σ,γ=e-x’2+γ2y’2σ2*ei 2πx’λ+ψ           ( SEQ Equation * ARABIC 2)

Where

x’=x cosθ+ysin⁡θ and y’=- x cosθ+ysin⁡θ.

How Do I Get an Essay Written?

Easy—place your order online, and your writer dives in. Check drafts or updates as you go, then download the final paper from your account. Pay only when you’re happy—simple and affordable!

(

λ) is the wavelength of the sinusoidal form, (

θ) is the orientation of the Gabor function, (

ϕ) is the phase offset, (

How Fast Can You Handle Urgent Deadlines?

Super fast! Our writers can deliver a quality essay in 24 hours if you’re in a pinch. Pick your deadline—standard is 10 days, but we’ll hustle for rush jobs without skimping.

γ) is the spatial aspect ratio, and (

σ) is the standard deviation of the Gaussian envelope. To calculate the textural features of an image a set of Gabor filters are used with different frequencies and orientations [13]. We implement Gabor filter with three wavelengths (2, 4, and 8) and five orientations (0

°,45

°, 90

°, 135

Can You Tackle Complex Essay Topics?

Definitely! From astrophysics to literary theory, our advanced-degree writers thrive on tough topics. They’ll research deeply and deliver a clear, sharp paper that meets your level—high school to Ph.D.

°, and 180

°) which results in 15 filters, each filter is convolved with the input image generating 15 filtered images as shown in figure 4.

                     

(2, 0

°)      (2, 45

How Do You Meet My Professor’s Standards?

We tailor your paper to your rubric—structure, tone, everything. Our writers decode academic expectations, and editors polish it to perfection, ensuring it’s grade-ready.

°)       (2, 90

°)     (2, 135

°)    (2, 180

°)

What’s Your Editing Process?

Upload your draft, tell us your goals, and our editors will refine it—boosting arguments, fixing errors, and keeping your voice. You’ll get a polished paper that’s ready to shine.

A picture containing indoor, white, photo

Description generated with high confidence        

(4, 0

°)        (4, 45

°)     (4, 90

°)     (4, 135

Can You Suggest Paper Topics?

Sure! Need ideas? We’ll pitch topics based on your subject and interests—catchy and doable. Pick one, and we’ll run with it, or tweak it together.

°)    (4, 180

°)

(8, 0

°)      (8, 45

°)       (8, 90

°)     (8, 135

Do You Offer Rush Revisions?

Yes! If you need quick edits, our team can turn it around fast—hours, not days—tightening up your paper for last-minute perfection.

°)    (8, 180

°)

Tumor segment

Fig. 4: Resulted images from 2-D Gabor filter with three values of wavelengths and five values of orientations, numbers in brackets are (wavelength, orientation)

D.   Statistical Features

Texture of an image can be described easily using statistical approach [26]. These features are widely used in the classification of biomedical images [24]. We consider four first order statistics (mean, variance, skewness, and kurtosis) that is calculated from the histogram of the image and six second order statistics (Contrast, Correlation, Energy, Homogeneity, Entropy, and Maximum probability) which is calculated from the Gray Level Co-occurrence Matrix (GLCM). The GLCM is a 2-D histogram that describes the frequency of occurrence of two pixels separated by a certain distance. Table 1 summarizes these features.

As a result, 10 statistical features were obtained from each subband image resulted from three levels of 2-D DWT so, the total number of features extracted from the wavelet transform is 120 features. In a similar way, the same 10 statistical features were extracted from the images generated using Gabor filters results in 150 features, these features are combined to generate the feature vector with the size of 270 features.

Table 1: A LIST OF SELECTED STATISTICAL FEATURES

Feature Description Formula
Mean (m) Average intensity of the image m=∑i=0L-1i*pi
Variance (

Tags: Assessment Brief Assignment Help, Australia dissertation writers, Help write my thesis paper in UK, I need help with my Homework

Order|Paper Discounts

Why Choose Essay Bishops?

You Want The Best Grades and That’s What We Deliver

Top Essay Writers

Our top essay writers are handpicked for their degree qualification, talent and freelance know-how. Each one brings deep expertise in their chosen subjects and a solid track record in academic writing.

Affordable Prices

We offer the lowest possible pricing for each research paper while still providing the best writers;no compromise on quality. Our costs are fair and reasonable to college students compared to other custom writing services.

100% Plagiarism-Free

You’ll never get a paper from us with plagiarism or that robotic AI feel. We carefully research, write, cite and check every final draft before sending it your way.