Dersleri yüzünden oldukça stresli bir ruh haline sikiş hikayeleri bürünüp özel matematik dersinden önce rahatlayabilmek için amatör pornolar kendisini yatak odasına kapatan genç adam telefonundan porno resimleri açtığı porno filmini keyifle seyir ederek yatağını mobil porno okşar ruh dinlendirici olduğunu iddia ettikleri özel sex resim bir masaj salonunda çalışan genç masör hem sağlık hem de huzur sikiş için gelip masaj yaptıracak olan kadını gördüğünde porn nutku tutulur tüm gün boyu seksi lezbiyenleri sikiş dikizleyerek onları en savunmasız anlarında fotoğraflayan azılı erkek lavaboya geçerek fotoğraflara bakıp koca yarağını keyifle okşamaya başlar

GET THE APP

Journal of Addiction Research & Therapy - Appraisal and Prediction of Various Behavior Therapy Programs for Autistic Spectrum Children in West-Bank City of Hebron: Child and Toddler Mental Health
ISSN: 2155-6105

Journal of Addiction Research & Therapy
Open Access

Like us on:

Our Group organises 3000+ Global Conferenceseries Events every year across USA, Europe & Asia with support from 1000 more scientific Societies and Publishes 700+ Open Access Journals which contains over 50000 eminent personalities, reputed scientists as editorial board members.

Open Access Journals gaining more Readers and Citations
700 Journals and 15,000,000 Readers Each Journal is getting 25,000+ Readers

This Readership is 10 times more when compared to other Subscription Journals (Source: Google Analytics)
  • Research Article   
  • J Addict Res Ther 500, Vol 13(11)

Appraisal and Prediction of Various Behavior Therapy Programs for Autistic Spectrum Children in West-Bank City of Hebron: Child and Toddler Mental Health

Soni Gaurav*
Associate Professor, Department of Pharmacology, Faculty of Pharmacy, Lords University, Alwar, Rajasthan, India
*Corresponding Author: Soni Gaurav, Associate Professor, Department of Pharmacology, Faculty of Pharmacy, Lords University, Alwar, Rajasthan, India, Tel: +9461198910, Email: pharmasonins2021@gmail.com

Received: 31-Oct-2022 / Manuscript No. jart-22-82841 / Editor assigned: 02-Nov-2022 / PreQC No. jart-22-82841 (PR) / Reviewed: 16-Nov-2022 / QC No. jart-22-82841 / Revised: 21-Nov-2022 / Manuscript No. jart-22-82841 (R) / Accepted Date: 23-Nov-2022 / Published Date: 28-Nov-2022

Abstract

Background: Choice of effective behavior therapy program(s) for ASD patients have been a concern for therapists, speech and language specialists, and psychiatrists. Failure of teaching program or combination of programs might lead to family frustration, unnecessary cost and high level of drop off from therapy.


Objectives: to determine factors associated with the proper choice of behavior therapy program and assessment of improvement on different programs and what programs are best for the autistic child.


Methods: This retrospective cohort study involved 60 ASD children at Muhmamd Ben Al Maktoom Centre at Hebron City, West Bank. We followed them back in time for the last 6 months of 2021. We used Gilliam scale to determine degree of the condition. Subject of this study were exposed to different behavioral therapy programs for average period of 3 years. We calculated the child overall percentage improvement in performing assigned tasks of these programs as the main outcome of study for the last 6 months. We used SPSS V 25 for data analysis and prediction model construction.


Results: Sixty children participated in this study, 5.9 ± 2.11 years old and 81.7% males. Almost 80% of these children were diagnosed with ASD. Almost 83.3% were moderate to over moderate on Gilliam. Three categories of behavioral therapy programs were assigned for these children: language, social and communication, and/or cognitive and self-help. Almost 120 child used first category programs, 57 child used second category, and 59 child used the third category. Average improvement was 64.93 ± 16.51%. Diagnosis significantly affected total improvement, p=0.000. Pervasive developmental disorder (PDD) and complex disorder significantly predict improvement among autistic children at p=0.047 and 0.001, respectively.


Conclusions: ASD classification is most important factor for prediction of improvement of autistic child in behavioural therapy programs, while age is most important factor in progress of improvement.

Keywords

Addiction research; Addiction therapy; Autism; PDD; Behaviour therapy; Language; Speech; Cognitive; Self-help; Functionality

Introduction

Autism is a neurobiological disorder that remains a clinical diagnosis. It characterized by core deficits in social communication and interaction, as well as restricted and repetitive patterns of behavior and interests [1]. In some cases, ASD might develop in days to weeks, while it develops slowly in others [2]. Autistic Spectrum Disorder (ASD) is becoming more prevalent. This could be due to increased awareness of the disorder, over-diagnosis, or over-inclusive diagnostic criteria [3].

The worldwide estimated prevalence of individuals with ASD diagnosis is strikingly high with prevalence varying across numerous studies. Most studies estimated that one in 160 children has an ASD worldwide, and expected to increase globally [4].

A study pointed that numerous and complex signaling pathways are involved in the etiology and pathophysiology of autism spectrum disorder (ASD) [5]. Genetic studies revealed that alteration in the developmental pathways of neuronal and axonal structures that are strongly involved in synaptogenesis emerge from single gene mutations [6], could be involved in autism.

Habenula which is a small epithalamic structure that has rich widespread connections to multiple cortical, subcortical and brainstem regions was identified as the central structure modulating the reward value of social interactions, behavioral adaptation, sensory integration and circadian rhythm.

Using anatomical magnetic resonance imaging (MRI) and automated segmentation, neurologists showed that habenula was significantly enlarged in children and adults with ASD compared to age-matched controls [7]. They also observed a decrease in grey matter volume in the brainstem in autistic subjects with no difference in white matter volume using MRI [8]. This was considered as brain stem impairment pathology.

Elevations in the cell-packing density in specific amygdalar subregions were observed, which also included a 30–35% reduction in cell size in the central, cortical, and medial nuclei. Minor changes were observed in the basolateral complex [9]. These results, when combined with the MRI studies, reported that the amygdala of autistic cases underwent abnormal growth and development postnatally and showed enlarged and reduced neuronal numbers [10, 11]. The expansion of the term Autism to ASD representing a range of disorders affecting an individual’s communication, behavior, and social interaction [12].

Specialists make a diagnosis of autistic disorder when there are impairments in communication and reciprocal social interaction with the presence of restricted repetitive and stereotyped patterns of behaviors or interests, prior to the age of 3 years. Percentage affected is 20% of the population. Patients of this type are self-injurious with unusual behavior [13]. Alternatively, Asperger disorder, is used when autistic symptoms are present with no significant general delay in language and cognitive development. Percentage affected is majority of the population [14].

On the other hand, not otherwise specified autism is called pervasive developmental disorder (PDD), or atypical autism. Challenges in social interaction and communication is given when the triad of symptoms is present but the criteria are not met for a specific ASD form. PDD percentage affected is below 5%–7% of the population [15].

The Diagnostic and Statistical Manual of Mental Disorders defined the diagnostic criteria for ASD [16]. These criteria include Autism Diagnostic Observation Schedule (ADOS) and Autism Diagnostic Interview-Revised (ADI-R) or a combination of both which had better reflected consensus clinical judgments of autism and ASD [17]. The professionals who provide diagnosis of ASD are Speech and language Pathologists, Psychologists, pediatricians, psychiatrists and Occupational therapists [18].

In addition, the Gilliam Autism Rating Scale was developed to identify individuals with autism in research and clinical settings with little empirical attention [19].

In this study, we will shed the light on a cohort of ASD children in one leading centre in the city. We will investigate various behaviour therapy modalities available in managing the condition while monitoring factors associated with improvement in their condition in a retrospective fashion.

Methods and Materials

This retrospective cohort study involved 60 children registered as ASD at Muhmamd Ben Al Maktoom Centre at Hebron City, West Bank. Their average age was 5.95±2.11 years and they were 81.7% males. A psychiatrist confirmed ASD diagnosis for all children prior to admission to the centre. Psychiatrists diagnosed most children as having ASD with abnormal biforntal spikes on EEG; left side is more than right side, suggestive of frontal epileptic features. We reviewed children`s profiles, met with their care providers and close family members. We collected their sociodemographic and clinical data as pertaining to the question of the study. We collected also all medical, behavioral, occupational therapy, or other learning modalities and interventions during the past six months of 2021. By then, most children have spent at least 3 years in the centre. We used Gilliam Autism Rating Scale (GARS2) to determine degree of ASD for these children at the beginning of the study (present score). We also recorded Gilliam score at time of admission to the centre (past score). We categorized children according to Gilliam score as mild to severe Gilliam. All participants were on low sugar and protein diet. Some of these kids were on psychotropic drugs. Therapy specialists in the centre assigned the proper behaviour therapy program for each child according to his diagnosis, Gilliam score, and areas of deficiency. The child will receive training by speech therapists, physical therapists, psychologists, and/or occupational therapists. Finally, we calculated the overall percentage improvement in performance of the assigned tasks and learning programs for each child as main outcome of study. Some of the programs used for behavioural therapy were LOVAS, TEACCH,ABILS, ABICC, Mentsory, Portage, and Help. We used SPSS V 25 for data analysis.

Results

Sixty children participated in this study, 5.9 ± 2.11 years old and 81.7% males. We reviewed their profiles during the last six months and interviewed their family members, caregivers and professionals who worked closely with them. All data collected was included in table 1 below. Almost 80% of these children was diagnosed with ASD and 83.3% were moderate to over moderate on Gilliam. Average improvement was 64.93 ± 16.51% (Table 1).

Variables N Percentage (%)
Gender    
Male 49 81.7
Female 11 18.3
Gilliam    
Mild 2 3.3
under moderate 5 8.3
Moderate 37 61.7
above moderate 13 21.7
Severe 3 5.0
Diagnosis    
ASD 48 80.0
PDD 6 10.0
Complex disorder 6 10.0
Number of drugs    
0 48 80.0
One 7 11.7
Two 3 5.0
Three 2 3.3
Portage    
Yes 40 66.7
No 20 33.3
Ables    
Yes 39 65.0
No 21 35.0
Lovaas    
Yes 42 70.0
No 18 30.0
Teacch    
Yes 41 68.3
No 19 31.7
Help    
Yes 22 36.7
No 38 63.3
Mentessori    
Yes 18 30.0
No 42 70.0
Bicc    
Yes 19 31.7
No 41 68.3
Sonrise    
Yes 15 25.0
No 45 75.0
Multivitiron    
Yes 3 5.0
No 57 95.0

Table 1: Participants sociodemographic and clinical data.

Study of the differences of main outcome of study (total percentage improvement) with the different behaviour therapy programs, gender, and diagnosis showed that diagnosis significantly affected the total improvement, p=0.000. In a sense, the worse the diagnosis of the child at admission (Complex disorder and PDD), the least expected benefit he/she will get from any of the learning programs as shown in table 2 below (Table 2).

Variables N Mean Stander deviation P-value
Gender       0.326 Ŧ
Male 49 65.84 15.83  
Female 11 60.91 19.6  
Portage       0.355 Ŧ
Yes 40 63.6 16.86  
No 20 67.6 15.86  
Ablls       0.169 Ŧ
Yes 39 63.26 16.62  
No 21 68.05 16.24  
Lovaas       0.536 Ŧ
Yes 42 63.48 18.2  
No 18 68.33 11.38  
Teacch       0.761Ŧ
Yes 41 64.78 17.22  
No 19 65.26 15.32  
Help       0.378 Ŧ
Yes 22 63.55 14.56  
No 38 65.74 17.68  
Montessori       0.569Ŧ
Yes 18 61.22 20.08  
No 42 66.52 14.71  
Bicc       0.442Ŧ
Yes 19 65.95 19.81  
No 41 64.46 14.99  
Sonrise       0.218 Ŧ
Yes 15 60.67 19.99  
No 45 66.36 15.17  
Multivitiron       0.798 Ŧ
Yes 3 61.67 27.54  
No 57 65.11 16.11  
Diagnosis       0.000 Ŧ
ASD 48 67.06 13.24  
PDD 6 76.67 7.53  
complex disorder 6 36.17 17.61  

ŦA Mann-Whitney U test was used to calculate significant levels (P value).

Ŧ: Comparison of means using Independent samples Kruskal Wallis test.

Table 2: Factors associated with differences in total percentage improvement for ASD.

Out of the main factors of different effect on main outcome of the study, what are the most important ones? In order to answer this question, we run a multi-regression analysis that led to the development of the following prediction model, as shown in table 3 below and the equation (Table 3).

Variables Coefficient Robust Std. Err. t Sig. [95% Conf. Interval]
Constant 84.700 13.320 6.360 0.000 57.960 111.441
Age -1.764 0.980 -1.800 0.078 -3.731 0.204
Number of drugs 2.415 2.947 0.820 0.416 -3.500 8.331
Gilliam level            
under moderate -15.531 14.290 -1.090 0.282 -44.219 13.158
moderate -5.330 12.342 -0.430 0.668 -30.108 19.449
above moderate -11.177 13.042 -0.860 0.395 -37.360 15.006
severe -14.964 17.097 -0.880 0.386 -49.286 19.360
Diagnosis
PDD 8.984 4.412 2.040 0.047 0.126 17.842
complex disorder -31.914 8.810 -3.620 0.001 -49.601 -14.227
Dependent variable: OUTCOM. R2=48.54%; F (8, 51) =5.98; Sig=0.00 test of model in general

Table 3: Factors associated with child`s percentage improvement in overall performance of various behaviour therapy programs.

From the above table, the prediction equation: 84.7 + (age* -1.76) + (number of drugs*2.4) + 8.98 + (1*- 5.33) = percentage improvement. Prediction power is R2 = 48.54%.

We can use the model above to predict percentage improvement of the child before even starting training on any of the behaviour therapy programs. Now professionals in the centre can use this model to predict improvement after they choose best fit programs according to child`s diagnosis, Gilliam level, number of drugs he is on, and age.

For example: for a 4-year old child, who was diagnosed with PDD, has level 3 Gilliam, and is on 2 drugs, expected percentage improvement will be calculated as:

84.7+ (4*-1.76) + (2*2.4) + (8.98) + (1*-5.33) = 86.11%

In order to elaborate on the prediction power of the model, we picked up a child randomly who turned to be 7 years old. We compared his actual improvement as recorded in his profile with the calculated percentage improvement from our model. Actual improvement was 70% and calculated one was 72%, close enough to each other.

Discussion

Autism, the silent condition of silence. The enigmatic neuropsychiatric condition with no cure neither full understanding of the underlying pathogenesis or manifestations. Most of time it went underdiagnosed or mixed up with other conditions such as ADHD. Some other times, it could be over-estimated due to non-professional judgment by non-trained neither clinically educated schoolteachers, social workers, nor psychotherapists.

ASD can be distinguished by a pattern of multiple symptoms, and is typically identified before 2 years of age [20]. The symptoms of ASD are classified into two broad categories: the core and the secondary symptoms. The core symptoms consist of reduced language skills and social interaction, as well as the presence of repetitive and stereotypic behaviors (American Psychiatric). In contrast, secondary symptoms include complications such as self-injury, hyperactivity, aggression, and co-occurring psychiatric disorders such as anxiety and major depression [21]. Participants in this study suffered a spectrum of both symptoms at different degrees.

Management of autism requires behavior therapy, environmental therapy, and medications.

Behavior therapy mainly focuses on methodically training the patient to re-learn self-care, language, and social skills. Professionals from different domains, like speech therapists, physical therapists, psychologists, and occupational therapists with different levels of competence can benefit from this. Teachers, parents, and caretakers are always advised to use these behavior models [22].

Speech therapy, occupational therapy, physical therapy and environmental therapy are all adopted worldwide for the autistic children [23, 24]. They are fully adopted in the centre where we run this study.

Medications are used to treat psychiatric symptoms as they develop during the disease. There is no direct medical cure for this disease. Twelve patients in our study were on 1-3 psychotropic and nonpsychotropic medications according to their needs.

Hyperbaric oxygen therapy (HOBT) at ATA 1.3 using different oxygen pressures ranged from 28-100% in some studies, showed hope in some cases and was used successfully in case series studies in Thai children and other areas of the world [22, 25-30]. Few children used oxygen bubble in our study. Family claimed the child was very tired after the session, and they were withdrawn from the whole program.

Having this said, the major improvement was in behaviour and functionality of these children. Average improvement was 64.93 ± 16.51% in the different behaviour therapy programs. However, this improvement in behaviour was not accompanied by improvement in Gilliam score neither in the original diagnosis. This proves valid the argument that improvement was functional.

When we first analyse the difference in improvement according to behaviour therapy programs and other factors, age was significant at p value less than 0.05. The earlier you admit the child the faster and better he/she will learn and achieve better level of improvement in the assigned behaviour therapy programs. Further regression analysis showed that the most important factor in improvement was diagnosis rather than age. Age, then, was slightly significant in this prediction model at p value less than 0.1.

Diagnosis is the most important factor in learning, improvement, and achieving positive outcomes. In a sense, even if the child was admitted at young age but he/she had PDD or complex ASD, late ADHD on top of autism or mental retardation, the child will achieve, if any, very little improvement. In certain programs, child will not be able to achieve even a slight improvement. Some children in the centre had slight mental retardation component and they kept shifting them from a program to another without improvement.

Behaviour therapy programs was divided into three categories: language and speech (Teacch, portage, and ablls), social and communication focused programs (lovaas, sonrise), and cognitive management and self-help (Bicc, montessori, and help). Specialists in the centre assigned different programs for these children according to initial need, diagnosis, and Gilliam score at time of admission. First category programs were used in120 child (41 children in teach, 40 in portage, and 39 in ablls), second category programs was used in 57 child, and third category in 59 child. Children were assigned different combinations of these programs and average percentage improvement was 64.93 ± 16.51% in each sector of these 3 programs.

Some children went to regular schools after doing extremely well in all programs, others drop earlier form the training by family, and third portion had hard situation such as mental retardation component were they needed medical attention and were dismissed from the centre. Maximum age of acceptance was 12 years old.

Actually, one of the most important barriers in therapy is family illiteracy and higher expectations of cure for their kids, which lead to early withdrawal from the centre. Financial cost is another barrier since these services are private, very expensive, and not covered by any third party neither by the government. A third barrier was the difficulty in choosing the proper program(s) from the beginning for the child. Specialists in the centre kept trying various therapy programs until they decide on which one they want to start the child. This leads to frustration of the family, care providers, and the child himself in addition to unnecessary extra cost and higher drop rate.

Actually, one of the most important contributions of our research, in addition to descriptive value of the results, quantifying improvement, and the evaluation of overall quality and efficacy of therapy programs, was the prediction model we built. This model will help professionals from different backgrounds in any many centre in the country and around the world to predict with much precision the best program(s) to start the child on right from the beginning.

Early diagnosis and involvement in behaviour therapy programs improves markedly the outcomes of the child. Knowing that no cure for this condition thus far, at least starting early improves functionality and increase child`s self-independency skills.

Education and raising awareness of communities, families, parents, schoolteachers and social workers to autistic behavior and withdrawal from the community as the first sign of autism is crucial.

Research at the level of neurotransmitters in order to unravel the electrical circuits or the synapse(s) of autism is a present and future research priority.

Ethics Approval and Consent To Participate

A consent form was signed by attending family member (s) and caregivers in the centre on behalf of the child in order to participate in this research. We guarantee the rights for voluntarily participating in this study and the right to withdraw at any time or at any stage of the study. We guaranteed information confidentiality of subjects of the study and the centre.

Competing Interest

We declare no competing interest for this work.

Funding

We did not receive any fund for this research.

Author’s Contributions

MS: hypothesis, project idea and design, field supervision, monitoring progress and time schedule, scheme of analysis, follow up on SPSS details, and writing the manuscript. Other three co-authors: literature-review, data collection, fieldwork, Google form preparation, participated in data analysis.

References

  1. Handa SS, Khanuja SPS, Longo G, Rakesh DD (2008) Extraction Technologies for Medicinal and Aromatic Plants. International Centre for Science and High Technology, Trieste, USA.
  2. Indexed at, Google Scholar

  3. Gonzalez-Burgos E, Garretero ME, GonmezSerranillos MP (2011) Sideritis spp.: Uses, chemical composition and pharmacological activities - A review. J Ethnopharmacol 135: 209-225.
  4. Indexed at, Google Scholar, Crossref

  5. Bakkali F, Averbeck S, Averbeck D, Idaomar D (2008) Biological effects of essential oils- A review. Food Chem Toxicol 46: 446-475.
  6. Indexed at, Google Scholar, Crossref

  7. Silva J, Abebe W, Sousa SM, Duarte VG, Machado MIL, et al. (2003) Analgesic and anti-inflammatory effects of essential oils of Eucalyptus. J Ethnopharmacol 89: 277-283.
  8. Indexed at, Google Scholar, Crossref

  9. Schnitzler P, Koch C, Reichling J (2007) Susceptibility of drug-resistant clinical Herpes simplex virus type 1 strains to essential oils of ginger, thyme, hyssop, and sandalwood. Antimicrob Agents Chemother 51: 1859-1862.
  10. Indexed at, Google Scholar, Crossref

  11. Paz-Elizur T, Sevilya Z, Leitner-Dagan Y, Elinger D, Roisman LC, et al. (2008) DNA repair of oxidative DNA damage in human carcinogenesis: Potential application for cancer risk assessment and prevention. Cancer Lett 266: 60-72.
  12. Indexed at, Google Scholar, Crossref

  13. Wei A, Shibamoto T (2010) Antioxidant/lipoxygenase inhibitory activities and chemical compositions of selected essential oils. J Agric Food Chem 58: 7218-7225.
  14. Indexed at, Google Scholar, Crossref

  15. El-Ghorab AH, Shibamoto T, Ozcan MM (2007) Chemical composition and antioxidant activities of buds and leaves of capers (Capparis ovata Desf. Var. canescens) cultivated in Turkey. J Essent Oil Res 19: 72-77.
  16. Indexed at, Google Scholar, Crossref

  17. Botsoglou N, Florou-Paneri P, Christaki E, Giannenas I, Spais A (2004) Performance of rabbits and oxidative stability of muscle tissues as affected by dietary supplementation with oregano essential oil. Arch Anim Nutr 58: 209-218.
  18. Indexed at, Google Scholar, Crossref

  19. El-massry KF, El-Ghorab AH (2006) Effect of essential oils and non-volatile extracts of some aromatic plants on Cuinduced oxidative modification of human low-density lipoprotein (LDL). J Essent Oil Bear Plants 3: 292-299.
  20. Google Scholar, Crossref

  21. Mimica-Dukic N, Bozin B, Sokovic M, Simin N (2004) Antimicrobial and antioxidant activities of Melissa officinalis L. (Lamiaceae) essential oil. J Agric Food Chem 52: 2485-2489.
  22. Indexed at, Google Scholar, Crossref

  23. Bajpai VK, Rahman A, Kang SC (2008) Chemical composition and inhibitory parameters of essential oil and extracts of Nandina domestica Thunb. to control foodborne pathogenic and spoilage bacteria. Int J Food Microbiol 125: 117-122.
  24. Indexed at, Google Scholar, Crossref

  25. Gutierrez J, Barry-Ryan C, Bourke P (2008) The antimicrobial efficacy of plant essential oil combinations and interactions with food ingredients. Int J Food Microbiol 124: 91-97.
  26. Indexed at, Google Scholar, Crossref

  27. Santoyo S, Cavero S, Jaime L, Ibanez E, Senorans J, et al. (2006) Supercritical carbon dioxide extraction of compounds with antimicrobial activity from Origanum vulgare L.: Determination of optimal extraction parameters. J Food Prot 69: 369-375.
  28. Indexed at, Google Scholar, Crossref

  29. Edris AE (2007) Pharmaceutical and therapeutic potentials of essential oils and their individual volatile constituents. Phytother Res 21: 308-323.
  30. Indexed at, Google Scholar, Crossref

  31. Schmid-Scheonbein GW (2006) Analysis of inflammation. Ann Rev Biomed Eng 8: 93-151.
  32. Indexed at, Google Scholar, Crossref

  33. Tanaka A, Shibamoto T (2008) Antioxidant and Antiinflammatory Activities of Licorice Root ( Glycyrrhiza uralensis ): Aroma Extract. ACS Symposium Series 993: 229-237
  34. Indexed at, Google Scholar, Crossref

  35. Razzaghi-Abyaneh M, Shams-Ghahfarokhi M, Rezaee MB, Jaimand K, Alinezhad S, et al. (2009) Chemical composition and anti aflatoxigenic activity of Carum carvi L., Thymus vulgaris and Citrus aurantifolia essential oils. Food Control 20: 1018-1024.
  36. Indexed at, Google Scholar, Crossref

  37. Bakkali F, Averbeck S, Averbeck D, Zhiri A, Baudoux D,  et al. (2006) Antigenotoxic effects of three essential oils in diploid yeast (Saccharomyces cerevisiae) after treatments with UVC radiation, 8- MOP plus UVA and MMS. Mutat Res 606: 27-38.
  38. Indexed at, Google Scholar, Crossref

  39. Abdalla AEM, Darwish SM, Ayad EHE, El-Hamahmy RM (2007) Egyptian mango by-product 2: Antioxidant and antimicrobial activities of extract and oil from mango seed kernel. Food Chem., 103, 1141-1152.
  40. Indexed at, Google Scholar, Crossref

  41. Sandhar HK, Kumar B, Prasher S, Tiwari P, Salhan M, et al. (2011) A review of phytochemistry and pharmacology of flavonoids. Int Pharm Sci 1: 25-41.
  42. Indexed at, Google Scholar

  43. Muhlbauer RC, Lozano A, Palacio S, Reinli A, Felix R (2003) Common herbs, essential oils, and monoterpenes potently modulate bone metabolism. Bone 32: 372-380.
  44. Indexed at, Google Scholar, Crossref

  45. Ceccarelli I, Lariviere WR, Fiorenzani P, Sacerdote P, Aloisi AM (2004) Effects of long-term exposure of lemon essential oil odor on behavioral, hormonal ad neuronal parameters in male and female rats. Brain Res 1001: 78-86.
  46. Indexed at, Google Scholar, Crossref

  47. Brandi G, Amagliani G, Schiavano GF, De Santi M, Sisti M (2006) Activity of Brassica oleracea leaf juice on food borne pathogenic bacteria. J Food Protec 69: 2274-2279.
  48. Indexed at, Google Scholar, Crossref

  49. Goni P, Lopez P, Sanchez C, Gomez-Lus R, Becerril R, et al. (2009) Antimicrobial activity in the vapour phase of a combination of cinnamon and clove essential oils. Food Chem 116: 982-989.
  50. Indexed at, Google Scholar, Crossref

  51. Brissette I, Scheier MF, Carver CS (2002) The role of optimism in social network development, coping, and psychological adjustment during a life transition. J Pers Soc Psychol 82: 102-120.
  52. Indexed at, Google Scholar, Crossref

  53. Chen KJ, Yang CC, Chiang HH (2018) Model of coping strategies, resilience, psychological well-being, and perceived health among military personnel. J Med Sci 38: 73.
  54. Indexed at, Google Scholar, Crossref

  55. Dergisi A (2006) Examining of the Relationships between Professional Burnout, Work Engagement and Job Satisfaction. 3: 49-80.
  56. Google Scholar, Crossref

  57. Gautam A (2015) Life Satisfaction and Life Orientation as predictors of Psychological Well Being. Inter J Indian Psychol 3: 20-27.
  58. Indexed at, Google Scholar, Crossref

  59. Haleem M, Masood S, Aziz M, Jami H (2017) Psychological Capital and Mental Health of Rescue Workers.Pakistan J Psychol Res32: 1-15.
  60. Google Scholar

Citation: Gaurav S (2022) Appraisal and Prediction of Various Behavior Therapy Programs for Autistic Spectrum Children in West-Bank City of Hebron: Child and Toddler Mental Health. J Addict Res Ther 13: 500.

Copyright: © 2022 Gaurav S. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

Post Your Comment Citation
Share This Article