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Cancer Prevention & Current Research

Research Article Volume 12 Issue 1

A study on disease dynamics of covid-19 in different states of India: A data driven analysis of the available evidence

Pradyuman Verma,1 Jang Bahadur Prasad,2 Naresh K Tyagi3

1Ph.D. Scholar, Department of Epidemiology and Biostatistics, KLE Academy of Higher Education and Research, India
2Assistant Professor, Department of Epidemiology and Biostatistics, KLE Academy of Higher Education and Research, India
3Professor and Head, Department of Epidemiology and Biostatistics, KLE Academy of Higher Education and Research, India

Correspondence: Jang Bahadur Prasad, Assistant Professor, Department of Epidemiology and Biostatistics, KLE Academy of Higher Education and Research, Belgaum- 590010, Karnataka, India, Tel +91 7349310589

Received: February 16, 2021 | Published: March 23, 2021

Citation: Verma P, Prasad JB, Tyagi NK. A study on disease dynamics of covid-19 in different states of India: A data driven analysis of the available evidence. J Cancer Prev Curr Res. 2021;12(1):36-42. DOI: 10.15406/jcpcr.2021.12.00451

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Abstract

Backgrounds: Case Fatality Ratios (C.F.R.) in neighbouring countries recently varied widely, with highest being in Afghanistan (2.43%), followed by Pakistan (2.05%), Bangladesh (1.26%), Sri Lanka (0.54%), Maldives (0.38%), and Nepal (0.21%). This study–based on analysis of COVID-19 data from India, was undertaken to investigate into the inter-state differentials in active case rates, recovery rates & CFRs, role of selected demographic risk variables on case-load and trends in active cases in top 10 most affected States.

Material & Methods: COVID-19 data on confirmed cases, recovered (cured) cases, deaths and active cases from Indian States, as on 27th October 2020, were down loaded from the official website of the Government of India. Data on selected demographic risk variables of COVID-19 disease were also obtained from country’s 2011 Census. Such data were analyzed for case-loads, case- rates and weekly growth in active cases to understand the dynamics of COVID-19 pandemic.

Results: Active case load was 68 per 1,00,000 population in top 10 highly affected States by COVID-19, as compared to rest of the Indian States (28 per 1,00,000 population), with C.F.R. (weighted average) being 1.71 % and 1.38 % in the two groups of States respectively. COVID-19 active cases were highest-around 301 per 1,00,000 population in Puducherry, followed by Kerala (281/1,00,000 population), Ladakh (252/1,00,000 population) and Goa (173/1,00,000 population). The best State amongst 10 highly affected States for COVID-19 was Uttar Pradesh with minimum active case load of 13 per 1,00,000 population, followed by Odisha (37/1,00,000 population), Tamil Nadu (41 per 1,00,000 population) whereas, in rest of the States of the country, best State was Dadra Nagar & Haveli and Daman & Diu (with active case load of 9/1,00,000 population), followed by Bihar (9/1,00,00 population), Madhya Pradesh (15/1,00,000) and then Punjab (15/1,00,000). Furthermore, Kerala, Delhi, Karnataka and West Bengal were worse in controlling the COVID-19 disease.

Conclusion: Spread of COVID-19 disease has been steady and consistent throughout the country. Major burden of disease has been from 10 most affected States. COVID-19 case load increased almost continuously in different States but growth of the disease in them was slower-indicating better condition of the disease dynamics in our country than in many other countries of the world. It however, needs intense efforts from us to contain the disease in our country.

Keywords: COVID-19 disease, active case ratio, trend, case fatality ratio

Introduction

Severe Acute Respiratory Syndrome Corona virus 2 (SARS–CoV–2) is named as Corona-virus that causes Corona virus disease 2019 (COVID-19). Corona virus disease is transmitted from people to people through respiratory droplets and contact routes.1 Droplet transmission occurs through close contacts with someone who has COVID-19 symptoms. Hence, Corona virus disease transmission occurs by direct contact with infected people or by contacts with surfaces in the immediate environment or objects, used by infected persons. Thus, people may acquire Corona virus disease through air or after touching contaminated objects even after hours.2 Airborne transmission of the disease could be possible in specific circumstances and settings. WHO declared outbreak of COVID-19 disease a Public Health Emergency of International Concern on 30 January 2020.3

Novel Corona Virus (nCoV) is a provisional name, which has been given to Corona viruses. The word ‘novel’ indicates a new pathogen of a previously known family of viruses. ‘COVID-19’ is the name, given by WHO officially, to Corona virus disease.4 Here, ‘co’ and ‘vi’ come from Corona Virus with ‘d’ meaning disease and ‘19’ stands for year 2019. Common symptoms of the COVID-19 disease are fever, cough, headache, shortness of breath and loss of taste, etc. Due to huge impact of the disease on different aspects of human life, novel Corona Virus disease (COVID-19) has been most talked about, among infectious diseases.

At present, 218 countries and territories around the world, are affected from the COVID-19. In India, its first case was diagnosed in the State of Kerala on 30th January 2020. Since then, graph of COVID-19 cases in the country increased almost exponentially. The swift response of the Government of India, however, has reasonably contained the rapid progress of the infection. The Government of India had announced nationwide ‘lockdown’ from 25th March 2020 to 31 May 2020 in 4 phases to contain the Covid19 disease. The 5th phase of lockdown was limited to containment zones only. The consequences of lockdowns have been enormous and have generated economic and livelihood crisis in the country. Despite necessary control measures, a regular increase in the COVID-19 cases and deaths in different parts of the country have been observed, requiring necessary care from the Government machinery.

In India, as on 27 October 2020, the worst affected States from COVID-19 disease have been 10 (9 States and 1 UT). These are Maharashtra, Kerala, Karnataka, West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana, and Odisha, considering the load of COVID-19 confirmed cases per 1,00,000 population. In view of huge impact of COVID-19 on human life including economic state of the country, the present study was undertaken to assess the inter–state differentials in COVID-19 confirmed cases, recovery rates, active case rates & CFRs, look into the role of selected demographic variables on the case loads and to study trends in the active case ratios to understand the COVID-19 pandemic, to some extent.

Material and methods

The study - data on COVID-19 disease viz., total confirmed cases, total recovered cases, and total deaths, as available on 27th October 2020, were extracted from the official website of the Government of India.5,6 To study the prevalent differentials of COVID-19 disease amongst different States of the country, data were downloaded from another similar website.7 The data on States’ population for demographic risk variables were extracted from 2011 Census of India.8

The active cases of Covid19 were computed as:

Activecases=Confirmedcases(Curedcases+Deaths) MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadgeacaWGJb GaamiDaiaadMgacaWG2bGaamyzaiaaykW7caWGJbGaamyyaiaadoha caWGLbGaam4Caiabg2da9iaadoeacaWGVbGaamOBaiaadAgacaWGPb GaamOCaiaad2gacaWGLbGaamizaiaaykW7caWGJbGaamyyaiaadoha caWGLbGaam4CaiabgkHiTiaacIcacaWGdbGaamyDaiaadkhacaWGLb GaamizaiaaykW7caWGJbGaamyyaiaadohacaWGLbGaam4CaiabgUca RiaadseacaWGLbGaamyyaiaadshacaWGObGaam4CaiaacMcaaaa@6596@

Active case ratio (ACR) per week was computed as:

ACR= EA C i+7 EA C i MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaacgeacaGGdb GaaiOuaiabg2da9maalaaabaGaamyraiaadgeacaWGdbWaaSbaaSqa aiaadMgacqGHRaWkcaaI3aaabeaaaOqaaiaadweacaWGbbGaam4qam aaBaaaleaacaWGPbaabeaaaaaaaa@4317@

Where, EA C i+7 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadweacaWGbb Gaam4qamaaBaaaleaacaWGPbGaey4kaSIaaG4naaqabaaaaa@3C23@ = Expected Active Cases at (i+7) th MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaacIcacaWGPb Gaey4kaSIaaG4naiaacMcadaahaaWcbeqaaiaadshacaWGObaaaaaa @3D0B@ day and EA C i MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadweacaWGbb Gaam4qamaaBaaaleaacaWGPbaabeaaaaa@3A80@ = Expected Active Cases on i th MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadMgadaahaa WcbeqaaiaadshacaWGObaaaaaa@3A0F@ day. Here, 7-day Active Case Ratios, in place of 1-day Active Case Ratios, were used to get a magnifiable change in the index and to minimize the misreporting.

Active case ratio is expected to take values ≥ 0; here ‘0’ indicates no case of Covid19, ‘1’ indicates peak level of COVID-19, and more than ‘1’ indicates the increasing trend in cases of COVID-19.

Case Fatality Ratio (C.F.R.), which is at times, also loosely called as Case Fatality Rate, is often defined as the proportion of individuals who die of the disease, out of those who were diagnosed with same disease, and therefore, can be taken as a measure of severity in the detected cases. It may be indicated that this definition of the C.F.R. is applicable only under 2 assumptions: a) likelihood of the detection of cases and of deaths is consistent over the course of outbreak and that b) all reported cases have either recovered or died. This is however, not the case in an ongoing epidemic. Thus, in an ongoing epidemic, the above definition of C.F.R. cannot be applied. In our case, an alternative definition for computation of CFR, which should be applied9 for an ongoing epidemic like the present one, has been used here. Its formula is given below:

CFR= Deaths (Cured+Deaths) ×100 MathType@MTEF@5@5@+= feaagKart1ev2aaatCvAUfeBSjuyZL2yd9gzLbvyNv2CaerbuLwBLn hiov2DGi1BTfMBaeXatLxBI9gBaerbd9wDYLwzYbItLDharqqtubsr 4rNCHbGeaGqkY=Mj0xXdbba91rFfpec8Eeeu0xXdbba9frFj0=OqFf ea0dXdd9vqaq=JfrVkFHe9pgea0dXdar=Jb9hs0dXdbPYxe9vr0=vr 0=vqpWqaaeaabiGaciaacaqabeaadaqaaqaaaOqaaiaadoeacaWGgb GaamOuaiabg2da9maalaaabaGaamiraiaadwgacaWGHbGaamiDaiaa dIgacaWGZbaabaGaaiikaiaadoeacaWG1bGaamOCaiaadwgacaWGKb Gaey4kaSIaamiraiaadwgacaWGHbGaamiDaiaadIgacaWGZbGaaiyk aaaacqGHxdaTcaaIXaGaaGimaiaaicdaaaa@5089@

Results

Data on COVID-19 disease of different Indian States were grouped in two broad categories: (i) for top 10 highly affected States and (ii) for rest of States of the country. As on 27 October2020, top 10 highly affected States were identified, based on COVID-19 total confirmed cases. Such States were-Maharashtra, Kerala, Karnataka, West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana and Odisha. COVID-19 data for both the above groups of States and for each of the affected Indian States are given in Table 1. Different affected States, shown in Table 1, are arranged according to the total confirmed cases of the disease as on 27 October 2020. Table 1 also gives total COVID-19 confirmed cases, cured cases (recovered cases), active cases and deaths for different affected States as well as for both the above broad groups (with States within the group, taken together).

COVID-19 active case load in different states

Top 10 highly affected States had more than double COVID-19 active cases (around 68/1,00,000 population) against rest of the States of the country (28 active cases/1,00,000 population). Thus, major burden of the COVID-19 cases in the country has been mainly from disease active case load in top 10 highly affected States of the country. Further, amongst top 10 highly affected States, COVID-19 active case rate was highest in Kerala (281 active cases/1,00,000 population), followed by Delhi (154 active cases/1,00,000 population), Karnataka (124 active cases/1,00,000 population) and then Maharashtra (120 active cases/1,00,000 population). In other States of this group, active case rate ranged between 13 active cases/1,00,000 population (in Uttar Pradesh) and 58 active cases/1,00,000 population (in Andhra Pradesh). However, in the other group of States (i.e., in the rest of the States), active case rate fluctuated greatly. The highest active case rate was seen for Puducherry (301 active cases/1,00,000 population), followed by Ladakh (252 active cases/1,00,000 population), Goa (173 active cases/1,00,000 population), Manipur (164 active cases /1,00,000 population) and then Arunachal Pradesh (157 active cases/1,00,000 population). The active case rate in other States of this group, ranged between 9 active cases/1,00,000 population (Dadra & Nagar Haveli and Daman & Diu) and 93 active cases/100,000 population (Nagaland) (Table 1).

State/U.T.

Confirmed Cases

Cured cases

Active cases

Deaths

Number (n)

(Per 100 Confirmed Cases)

Number (n)

(Per 1,00,000 Population)

Number (n)

Case Fatality Ratio (%)

All India

79,46,429

72,01,070

90.62

6,25,857

51.7

1,19,502

1.63

Top 10 highly affected States#

60,73,219

54,92,840

90.44

4,84,834

67.96

95,545

1.71

Maharashtra

16,48,665

14,70,660

89.2

1,34,657

119.83

43,348

2.86

Andhra Pradesh

8,08,924

7,73,548

95.63

28,770

58.03

6,606

0.85

Karnataka

8,05,947

7,19,558

89.28

75,442

123.48

10,947

1.5

Tamil Nadu

7,11,713

6,71,489

94.35

29,268

40.57

10,956

1.61

Uttar Pradesh

4,72,077

4,38,521

92.89

26,652

13.34

6,904

1.55

Kerala

3,97,217

3,02,017

76.03

93,848

280.93

1,352

0.45

Delhi

3,59,488

3,27,390

91.07

25,786

153.6

6,312

1.89

West Bengal

3,53,822

3,10,086

87.64

37,190

40.74

6,546

2.07

Odisha

2,82,695

2,66,105

94.13

15,331

36.52

1,259

0.47

Telangana

2,32,671

2,13,466

91.75

17,890

51.11

1,315

0.61

Rest other States

18,73,210

17,08,230

91.19

1,41,023

28.37

2,397

1.38

Bihar

2,12,355

2,01,942

95.1

9,355

8.99

1,058

0.52

Assam

2,04,386

1,88,587

92.27

14,891

47.72

908

0.48

Rajasthan

1,88,048

1,69,962

90.38

16,233

23.68

1,853

1.08

Chhattisgarh

1,77,608

1,53,654

86.51

22,093

86.49

1,861

1.2

Madhya Pradesh

1,67,969

1,54,222

91.82

10,857

14.95

2,890

1.84

Gujarat

1,67,919

1,50,513

89.63

13,716

22.69

3,690

2.39

Haryana

1,59,457

1,47,566

92.54

10,154

40.05

1,737

1.16

Punjab

1,31,391

1,23,047

93.65

4,219

15.21

4,125

3.24

Jharkhand

99,906

93,368

93.46

5,666

17.18

872

0.93

Jammu & Kashmir

92,225

83,485

90.52

7,296

59.48

1,444

1.7

Uttarakhand

60,744

55,663

91.64

4,080

40.45

1,001

1.77

Goa

42,532

39,433

92.71

2,517

172.57

582

1.45

Puducherry

34,336

29,990

87.34

3,758

301.13

588

1.92

Tripura

30,293

28,153

92.94

1,796

48.89

344

1.21

Himachal Pradesh

20,586

17,782

86.38

2,511

36.58

293

1.62

Manipur

17,424

13,057

74.94

4,223

164.29

144

1.09

Arunachal Pradesh

14,391

12,182

84.65

2,174

157.11

35

0.29

Chandigarh

14,085

13,230

93.93

633

59.97

222

1.65

Meghalaya

9,066

7,471

82.41

1,514

51.03

81

1.07

Nagaland

8,663

6,792

78.4

1,838

92.9

33

0.48

Ladakh

5,978

5,216

87.25

691

252.19

71

1.34

Andaman and Nicobar Islands

4,253

3,997

93.98

198

52.03

58

1.43

Sikkim

3,840

3,530

91.93

245

40.13

65

1.81

Dadra & Nagar Haveli and Daman & Diu

3,228

3,176

98.39

50

8.54

2

0.06

Mizoram

2,527

2,212

87.53

315

28.71

Nil

0

Table 1 COVID-19 load* in different states of India as on 27 October 2020
Note: *Data Sources: References 5 & 6
#Top 10 highly affected States of India: Maharashtra, Kerala, Karnataka, West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana, and Odisha

Recovery status of the COVID-19 cases in different states

The overall recovery rate (i.e., cure rate) in the top 10 highly affected States was 90 per 100 COVID-19 confirmed cases against 91 per 100 confirmed cases in the rest of the States. In the former group of States (i.e., in top 10 highly affected States), the highest recovery rate was in Andhra Pradesh (96/100 confirmed cases), followed by Tamil Nadu (94/100 confirmed cases) and then Odisha (94/100 confirmed cases). However, in the latter group (i.e., in the rest of the States), the highest recovery rate was for Dadra & Nagar Haveli and Daman & Diu (98.39/100 confirmed cases), followed by Bihar (95/100 confirmed cases), and Jharkhand, Punjab, Chandigarh & Andaman–Nicobar Islands (94/100 confirmed cases, in each case). In other States of this group, recovery rates ranged between 75/100 confirmed cases (in Manipur) and 93/100 confirmed cases (in each-Haryana, Tripura & Goa) (Table 1).

States’ differentials of COVID-19 fatality status

C.F.R. of COVID-19 disease in top 10 highly affected cases was 1.71 % against 1.38 in the other group (i.e., in the rest of the States). Thus, top 10 highly affected States showed a slightly higher risk of fatality in COVID-19 cases than their counter parts. Further, if we view State-wise fatality differentials in the country, we find a highest COVID-19 C.F.R. for Punjab (3.24%), followed by Maharashtra (2.86%) and then Gujarat (2.39 %). Mizoram did not witness even a single death amongst COVID-19 cases till 27 October 2020. C.F.R. ranged between 0.06 % (in Dadra-Nagar Haveli & Daman-Diu and 2.07 % (in West Bengal) (Table 1). 

COVID-19 disease and some of its demographic risk variables

Table 2 reveals that 10 Indian States which were highly affected from COVID-19 disease comprised of 58.9% of the country’s population with population density of 499 per square kilometer as against 41.1% of the population proportion and with population density of 268 per square population in the rest of the States. Thus, population proportion as well as population density have been higher in the first group of 10 States (which were highly affected from COVID-19 disease) than the second one. Similarly, the proportion of urbanization (35%), sex-ratio (955 females/1,000 males) and proportion of senior citizens (9%) were also higher in the 10 highly affected States than their counterparts (25%, 924 females /1,000 males & 8% respectively). 

Demographic risk variables

In Top 10 highly affected states of the country

In rest of the country’s states

Population proportion  (%)

58.9

41.1

Population density (People per square km.)

499

268

Urbanization (%)

35.11

25.45

Sex ratio (Females per 1,000 males)

955

924

Population, aged 60+ years (%)

9.13

7.77

Table 2 Some demographic risk variables* of COVID-19 in top 10 highly affected states# of the country
Note: *Data source: Reference 8
#As on 27 October 2020, top 10 highly affected States were: Maharashtra, Kerala, Karnataka, West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana and Odisha

Weekly active case ratio in Top 10 highly affected states

Table 3 and Figure 1a, 1b & 1c show COVID-19 weekly active case ratio for 10 highly affected States. It may be seen here that Tamil Nadu was in worst position in controlling COVID-19 as on 22nd and 29th days with weekly active case ratios being 18.5 and 10.9 respectively. Thereafter, situation was almost under control up to 57th day but cases again increased on 64th day, cases remained almost steady up to 113th day and thereafter, there was some decrease in case load with occasional fluctuations. Maharashtra was in the worst situation for controlling the disease on 8th day with some fluctuations till 43th day and thereafter, the case load decreased. Similarly, Karnataka was in worst situation on 8th day & 15th day with weekly active case ratio being 5.0 & 6.0 respectively and thereafter, it started decreasing. Andhra Pradesh, similarly, was in bad state of affairs between 15th and 29th days, with weekly active case ratios lying between 8 & 4, reaching to the peak on 22nd day and thereafter, cases were under control.

Days    

Maharashtra    

Karnataka    

Andhra Pradesh    

Tamil Nadu    

Uttar Pradesh    

Kerala    

Delhi    

West Bengal    

Odisha    

Telangana    

*1

2

1

1

1

6

1

1

1

1

1

8

16

5

2

1

1.5

3

4

8

2

1

15

2.25

6

5

2

1.22

1

1

3.5

1.5

2

22

2.29

2.5

8.4

18.5

2.36

1

5.75

2.89

6.33

15.5

29

3.92

1.8

4.02

10.89

3.35

1

3.43

2.09

2.16

2.23

36

2.5

1.35

1.48

2.13

3.61

0

6.29

1.98

1.05

4.06

43

2.15

1.47

1.45

1.19

2.14

0

2.22

1.74

1.67

1.59

50

1.88

1.13

1.45

0.85

1.82

1.71

1.51

1.44

1.42

1.48

57

1.58

1.03

0.96

1.37

1.31

4.67

1.19

1.62

3

1.05

64

1.66

1.26

0.94

3.68

1.15

2.13

1.57

1.2

1.97

0.81

71

1.41

1.53

0.96

1.7

0.93

1.09

1.53

1.37

1.29

0.74

78

1.41

2.32

1.16

1.01

1.1

0.64

1.13

1.53

1.05

1.26

85

1.06

1.4

1.46

1.17

1.42

0.66

1.22

1.45

1.17

1.35

92

1.21

1.67

1.48

1.45

1.16

1.11

1.65

1.09

1.25

1.67

99

1.22

0.91

1.46

1.44

1.4

0.24

1.49

0.92

1.2

1.47

106

1.13

1.15

1.63

1.29

1.16

1.33

1.48

1.17

1.3

1.38

113

1.17

1.61

1.49

1.37

1.22

4

1.02

1.26

1.52

1.6

120

1.22

2.42

1.35

1.33

1.08

2.78

1.13

1.65

1.53

2.33

127

1.21

1.72

1.53

1.07

1.42

1.87

0.9

1.49

1.14

1.21

134

1.24

1.73

1.91

1.04

1.45

1.49

0.77

1.09

1.73

1.09

141

1.15

1.48

2.01

1.11

1.47

1.09

0.84

1.14

1.51

1.03

148

1

1.28

1.26

1.09

1.38

1.25

0.74

1.16

1.09

1

155

0.98

1.09

1.12

0.91

1.48

1.26

0.87

1.07

1.26

1.51

162

1.09

1.01

0.96

1.02

1.19

1.22

1.04

0.99

1.36

1.21

169

1.08

1.03

1.06

0.99

1.03

1.87

1.01

0.91

1.15

0.95

176

1.13

1.05

1.12

0.98

0.99

1.81

1.09

0.94

1

1.07

183

1.22

1.13

0.94

0.98

1.12

1.17

1.26

1.03

1.16

1.37

196

1.26

0.99

0.73

0.9

1.21

1.23

1.9

1.08

1.09

1.01

203

0.9

1.03

0.83

1

0.95

1.28

1.14

1.07

0.88

0.97

210

0.96

1.11

0.85

1

0.84

1.3

0.93

1.1

0.81

0.99

217

0.86

1.07

0.84

0.96

0.83

1.06

0.85

1.13

0.86

0.92

224

0.84

0.91

0.78

0.94

0.86

1.03

0.87

1.08

0.78

0.92

231

0.76

0.78

 

0.82

0.81

1.34

1.04

   

0.86

238

       

0.85

1.3

1.16

   

0.88

245

         

1.53

       

252

         

1.42

       

259

         

1.09

       

266

 

 

 

 

 

0.96

 

 

 

 

Table 3 Active case ratios of COVID-19 in 10 most affected states
Note: *Cases on 1st Day

Figure 1a Weekly active case ratio (1 March 2020 - 27 October 2020).

Figure 1b Weekly active case ratio; (1 March 2020 - 27 October 2020).

In Uttar Pradesh, a relatively higher case load was seen between 29th and 43th days with weekly active case ratios, lying between 2 and 4 and thereafter, it fluctuated within the smaller range (0.8–2.1). In Kerala, a high case load was seen on 57th and 113th days with weekly active case ratios being 4.7 and 4.0 respectively. On other days however, this ratio ranged between 0.2 and 3.0. As shown in Figure 1c (Table 3), Delhi was worst in controlling COVID-19 on 22nd day with weekly active case ratio being 5.8, and on 36th day, it became 6.3. Thereafter, COVID-19 cases fluctuated in a smaller range. In West Bengal, weekly active case ratio was highest (8.0) on the 8th day and after 15th day; such ratio started decreasing. In fact, it fluctuated within smaller range thereafter - indicating better control of disease during the study period. In Odisha, highest case load was seen on 22th day with weekly active case ratio being 6.3 and thereafter, COVID-19 cases decreased with some fluctuations. Similarly, in Telangana also, highest active case ratio was seen on 22th day with weekly active case ratio of 15.5.

Figure 1c Weekly active case ratio; (1 March 2020 - 27 October 2020).

Discussion

COVID-19 spread exponentially world over with no let up during the study period and has varying intensity across the countries; with minimum in Anguilla (3) and maximum in USA (7,447,693).10 Burden of COVID-19 disease in India increased fast from first case on 30th January 2020 to 79,46,429 confirmed cases, 1,19,502 deaths and 6,25,857 active cases as on 27 October 2020. Its case fatality ratio (CFR) varied from 0.06 % in Dadra & Nagar Haveli and Daman & Diu to the maximum of 3.24 % in Punjab, despite stringent measures, like lockdown etc., promptly taken by the Government.11 Actions of the Government of India were praised as ‘tough & timely’ by the WHO.12 

Researchers from different domains studied transmission dynamics of COVID-19, built statistical models and also made some useful predictions, like-disease grew exponentially13 etc. Prasad et al.,14 have also modified the existing exponential/quadratic models– by accommodating period of containment of disease, without taking any specific action at micro level. The present study was undertaken to assess the COVID-19 disease status & its inter-state differentials as on 27 October 2020 and to study trends of its active cases, to understand the dynamics of disease–pandemic. The results of the study may motivate the Union as well as State Government to take measures in disease management by considering the disease-burden at different levels. 

Top 10 highly affected States (taken together) were responsible for 76% of total COVID-19 confirmed cases and 80% of the total COVID-19 deaths in the country. Kerala was worst affected State, with an active case rate of 281/1,00,000 population but had a quite low CFR of 0.45 %. This was followed by Karnataka (124 active cases per 1,00,000 population & CFR = 1.50%) and Maharashtra (120 active cases per 1,00,000 population & CFR = 2.86%). As regards, status of active case rates in other States which were highly affected from COVID-19, this followed, in order, by West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana & Odisha. Their active case rates as well as CFRs, though varied yet, showed downward trend. As against this, active case rates amongst the ‘less affected States’, Puducherry had the highest active case rate (301/1,00,000 population), followed by Goa (173/1,00,000 population), Manipur (164/1,00,000 population) and then Arunachal Pradesh (157/1,00,000 population). CFR in Punjab was 3.24 % however, in rest of the States of this group; it remained within the smaller range (below 2.39 %). Here, though it is difficult to cause out the differentials of COVID-19 active case rates as well as CFRs, yet labour movement could be the one possibility for this-particularly in top 10 highly COVID-19 affected States. Further, demographic variables, like - population density, urbanization, sex-ratio and proportion of the aged population, along with turbulent labour unrest in some States, might have contributed considerably to the high active case rates as well as high fatality rates due to COVID-19. 

The COVID-19 case load increased nearly continuously in different States but growth of the disease in them was slower - indicating better condition of the disease dynamics in our country than in many other countries of the world. Veena Das (2020) also indicates that virus and different control measures varied by different societies and population. Furthermore, experiences of governance were varying enormously across different regions of the world.15 Country’s some States, namely-Tamil Nadu, Maharashtra and Telangana could not satisfactorily control the disease–at least in their initial days, as their weekly active case ratios went quite high, ranging between 16.0-19.0. More specifically, active case ratios were quite high in Tamil Nadu (18.5 on 22nd day), Maharashtra (16.0 on 8th day) and Telangana (15.50 on 22th day. Amongst highly affected States, States like–U.P., West Bengal, Kerala & Odisha were in better position in managing the disease-burden of COVID-19.

Findings of this Study may help in modifying the existing mathematical models, built to project COVID-19 cases and deaths– particularly in Indian context. It may be emphasized here that, as many of the built-in models do not correctly project current scenario of the disease in the country, models seem to have been constructed with bias and based on unrealistic assumptions.16 In order to get precise estimates of COVID-19, particularly of active cases and deaths, further research on mathematical models and their applications need to be undertaken to study the transmission dynamics of COVID-19.

Conclusion

Spread of COVID-19 has been slower throughout the nation in India as compared to some other world countries like USA, Italy, Brazil, Russia and Spain. In India, major burden of the COVID-19 has been due to ‘10 highly affected States, viz. Maharashtra, Kerala, Karnataka, West Bengal, Tamil Nadu, Andhra Pradesh, Uttar Pradesh, Delhi, Telangana, Odisha, with more than two and half times active case rate (68/1,00,000), as compared to the country’s remaining States which are relatively less affected from the disease (28/1,00,000). For weekly active case ratios, fluctuations were highest in Telangana, followed by Tamil Nadu and then Maharashtra in controlling COVID-19. Hence, to contain COVID-19 in the country, further research on case management, immunization, case holding and consequences in terms of socio-psycho behavioural changes in the population, need to be properly studied.

Ethical approval and consent to participate

Not applicable.

Consent for publication

Not applicable.

Funding

Not received any funding.

Acknowledgments

None.

Competing interests

The authors declare that they have no conflict of interest.

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